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--- |
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language: |
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- zh |
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- en |
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tags: |
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- qwen |
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pipeline_tag: text-generation |
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inference: false |
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--- |
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# Qwen-VL-Chat-Int4 |
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<br> |
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<p align="center"> |
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<img src="https://qianwen-res.oss-cn-beijing.aliyuncs.com/logo_vl.jpg" width="400"/> |
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<p> |
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<br> |
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<p align="center"> |
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Qwen-VL |
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<a href="https://huggingface.co/Qwen/Qwen-VL">🤗</a> |
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<a href="https://modelscope.cn/models/qwen/Qwen-VL/summary">🤖</a>  | |
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Qwen-VL-Chat |
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<a href="https://huggingface.co/Qwen/Qwen-VL-Chat">🤗</a> |
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<a href="https://modelscope.cn/models/qwen/Qwen-VL-Chat/summary">🤖</a>  |
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(Int4: |
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<a href="https://huggingface.co/Qwen/Qwen-VL-Chat-Int4">🤗</a> |
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<a href="https://modelscope.cn/models/qwen/Qwen-VL-Chat-Int4/summary">🤖</a> ) | |
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Qwen-VL-Plus |
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<a href="https://huggingface.co/spaces/Qwen/Qwen-VL-Plus">🤗</a> |
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<a href="https://modelscope.cn/studios/qwen/Qwen-VL-Chat-Demo/summary">🤖</a>  | |
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Qwen-VL-Max |
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<a href="https://huggingface.co/spaces/Qwen/Qwen-VL-Max">🤗</a> |
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<a href="https://modelscope.cn/studios/qwen/Qwen-VL-Max/summary">🤖</a>  |
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<br> |
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<a href="https://tongyi.aliyun.com/qianwen">Web</a>   |    |
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<a href="https://help.aliyun.com/zh/dashscope/developer-reference/vl-plus-quick-start">API</a>   |    |
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<a href="assets/wechat.png">WeChat</a>   |    |
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<a href="https://discord.gg/z3GAxXZ9Ce">Discord</a>   |    |
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<a href="https://arxiv.org/abs/2308.12966">Paper</a>   |    |
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<a href="TUTORIAL.md">Tutorial</a> |
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</p> |
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<br> |
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**Qwen-VL** 是阿里云研发的大规模视觉语言模型(Large Vision Language Model, LVLM)。Qwen-VL 可以以图像、文本、检测框作为输入,并以文本和检测框作为输出。Qwen-VL 系列模型性能强大,具备多语言对话、多图交错对话等能力,并支持中文开放域定位和细粒度图像识别与理解。 |
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**Qwen-VL** (Qwen Large Vision Language Model) is the visual multimodal version of the large model series, Qwen (abbr. Tongyi Qianwen), proposed by Alibaba Cloud. Qwen-VL accepts image, text, and bounding box as inputs, outputs text and bounding box. The features of Qwen-VL include: |
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目前,我们提供了Qwen-VL和Qwen-VL-Chat两个模型,分别为预训练模型和Chat模型。如果想了解更多关于模型的信息,请点击[链接](https://github.com/QwenLM/Qwen-VL/blob/master/visual_memo.md)查看我们的技术备忘录。本仓库为Qwen-VL-Chat的量化模型Qwen-VL-Chat-Int4仓库。 |
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We release Qwen-VL and Qwen-VL-Chat, which are pretrained model and Chat model respectively. For more details about Qwen-VL, please refer to our [technical memo](https://github.com/QwenLM/Qwen-VL/blob/master/visual_memo.md). This repo is the one for Qwen-VL-Chat-Int4. |
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<br> |
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## 安装要求 (Requirements) |
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* python 3.8及以上版本 |
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* pytorch2.0及以上版本 |
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* 建议使用CUDA 11.4及以上 |
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* python 3.8 and above |
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* pytorch 2.0 and above are recommended |
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* CUDA 11.4 and above are recommended |
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<br> |
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## 快速开始 (Quickstart) |
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我们提供简单的示例来说明如何利用 🤗 Transformers 快速使用Qwen-VL-Chat-Int4。 |
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在开始前,请确保你已经配置好环境并安装好相关的代码包。最重要的是,确保你满足上述要求,然后安装相关的依赖库。 |
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Below, we provide simple examples to show how to use Qwen-VL-Chat-Int4 with 🤗 Transformers. |
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Before running the code, make sure you have setup the environment and installed the required packages. Make sure you meet the above requirements, and then install the dependent libraries. |
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```bash |
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pip install -r requirements.txt |
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pip install optimum |
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git clone https://github.com/JustinLin610/AutoGPTQ.git & cd AutoGPTQ |
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pip install -v . |
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``` |
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接下来你可以开始使用Transformers来使用我们的模型。关于视觉模块的更多用法,请参考[教程](TUTORIAL.md)。 |
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Now you can start with Transformers. More usage aboue vision encoder, please refer to [tutorial](TUTORIAL_zh.md). |
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#### 🤗 Transformers |
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To use Qwen-VL-Chat-Int4 for the inference, all you need to do is to input a few lines of codes as demonstrated below. However, **please make sure that you are using the latest code.** |
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```python |
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from transformers import AutoModelForCausalLM, AutoTokenizer |
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import torch |
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torch.manual_seed(1234) |
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# Note: The default behavior now has injection attack prevention off. |
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tokenizer = AutoTokenizer.from_pretrained("Qwen/Qwen-VL-Chat-Int4", trust_remote_code=True) |
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# use cuda device |
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model = AutoModelForCausalLM.from_pretrained("Qwen/Qwen-VL-Chat-Int4", device_map="cuda", trust_remote_code=True).eval() |
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# 1st dialogue turn |
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query = tokenizer.from_list_format([ |
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{'image': 'https://qianwen-res.oss-cn-beijing.aliyuncs.com/Qwen-VL/assets/demo.jpeg'}, |
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{'text': '这是什么'}, |
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]) |
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response, history = model.chat(tokenizer, query=query, history=None) |
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print(response) |
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# 图中是一名年轻女子在沙滩上和她的狗玩耍,狗的品种可能是拉布拉多。她们坐在沙滩上,狗的前腿抬起来,似乎在和人类击掌。两人之间充满了信任和爱。 |
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# 2nd dialogue turn |
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response, history = model.chat(tokenizer, '输出"击掌"的检测框', history=history) |
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print(response) |
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# <ref>击掌</ref><box>(517,508),(589,611)</box> |
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image = tokenizer.draw_bbox_on_latest_picture(response, history) |
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if image: |
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image.save('1.jpg') |
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else: |
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print("no box") |
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``` |
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<p align="center"> |
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<img src="https://qianwen-res.oss-cn-beijing.aliyuncs.com/Qwen-VL/assets/demo_highfive.jpg" width="500"/> |
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<p> |
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<br> |
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## 量化 (Quantization) |
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### 效果评测 (Performance) |
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我们列出不同精度下模型在评测基准 **[TouchStone](https://github.com/OFA-Sys/TouchStone)** 上的表现,并发现量化模型并没有显著性能损失。结果如下所示: |
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We illustrate the model performance of both BF16 and Int4 models on the benchmark **[TouchStone](https://github.com/OFA-Sys/TouchStone)**, and we find that the quantized model does not suffer from significant performance degradation. Results are shown below: |
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| Quantization | ZH. | EN | |
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| ------------ | :--------: | :-----------: | |
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| BF16 | 401.2 | 645.2 | |
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| Int4 | 386.6 | 651.4 | |
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### 推理速度 (Inference Speed) |
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我们测算了在输入一张图片(即258个token)的条件下BF16和Int4的模型生成1792 (2048-258) 和 7934 (8192-258) 个token的平均速度。 |
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We measured the average inference speed (tokens/s) of generating 1792 (2048-258) and 7934 (8192-258) tokens with the context of an image (which takes 258 tokens) under BF16 precision and Int4 quantization, respectively. |
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| Quantization | Speed (2048 tokens) | Speed (8192 tokens) | |
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| ------------ | :-----------------: | :-----------------: | |
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| BF16 | 28.87 | 24.32 | |
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| Int4 | 37.79 | 34.34 | |
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推理速度测算是在单卡 A100-SXM4-80G GPU上运行,使用PyTorch 2.0.1及CUDA 11.4。 |
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The profiling runs on a single A100-SXM4-80G GPU with PyTorch 2.0.1 and CUDA 11.4. |
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### GPU显存占用 (GPU Memory Usage) |
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我们还测算了在一张图片输入的条件下BF16和Int4模型生成1792 (2048-258) 和 7934 (8192-258) 个token所需显存。结果如下所示: |
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We also profile the peak GPU memory usage for encoding 1792 (2048-258) tokens (including an image) as context (and generating single token) and generating 7934 (8192-258) tokens (with an image as context) under BF16 or Int4 quantization level, respectively. The results are shown below. |
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| Quantization | Peak Usage for Encoding 2048 Tokens | Peak Usage for Generating 8192 Tokens | |
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| ------------ | :---------------------------------: | :-----------------------------------: | |
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| BF16 | 22.60GB | 28.01GB | |
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| Int4 | 11.82GB | 17.23GB | |
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上述速度和显存测算使用[此脚本](https://qianwen-res.oss-cn-beijing.aliyuncs.com/profile_mm.py)完成。 |
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The above speed and memory profiling are conducted using [this script](https://qianwen-res.oss-cn-beijing.aliyuncs.com/profile_mm.py). |
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<br> |
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## 评测 |
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我们从两个角度评测了两个模型的能力: |
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1. 在**英文标准 Benchmark** 上评测模型的基础任务能力。目前评测了四大类多模态任务: |
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- Zero-shot Caption: 评测模型在未见过数据集上的零样本图片描述能力; |
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- General VQA: 评测模型的通用问答能力,例如判断题、颜色、个数、类目等问答能力; |
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- Text-based VQA:评测模型对于图片中文字相关的识别/问答能力,例如文档问答、图表问答、文字问答等; |
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- Referring Expression Compression:评测模型给定物体描述画检测框的能力; |
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2. **试金石 (TouchStone)**:为了评测模型整体的图文对话能力和人类对齐水平。我们为此构建了一个基于 GPT4 打分来评测 LVLM 模型的 Benchmark:TouchStone。在 TouchStone-v0.1 中: |
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- 评测基准总计涵盖 300+张图片、800+道题目、27个类别。包括基础属性问答、人物地标问答、影视作品问答、视觉推理、反事实推理、诗歌创作、故事写作,商品比较、图片解题等**尽可能广泛的类别**。 |
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- 为了弥补目前 GPT4 无法直接读取图片的缺陷,我们给所有的带评测图片提供了**人工标注的充分详细描述**,并且将图片的详细描述、问题和模型的输出结果一起交给 GPT4 打分。 |
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- 评测同时包含英文版本和中文版本。 |
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评测结果如下: |
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We evaluated the model's ability from two perspectives: |
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1. **Standard Benchmarks**: We evaluate the model's basic task capabilities on four major categories of multimodal tasks: |
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- Zero-shot Caption: Evaluate model's zero-shot image captioning ability on unseen datasets; |
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- General VQA: Evaluate the general question-answering ability of pictures, such as the judgment, color, number, category, etc; |
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- Text-based VQA: Evaluate the model's ability to recognize text in pictures, such as document QA, chart QA, etc; |
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- Referring Expression Comprehension: Evaluate the ability to localize a target object in an image described by a referring expression. |
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2. **TouchStone**: To evaluate the overall text-image dialogue capability and alignment level with humans, we have constructed a benchmark called TouchStone, which is based on scoring with GPT4 to evaluate the LVLM model. |
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- The TouchStone benchmark covers a total of 300+ images, 800+ questions, and 27 categories. Such as attribute-based Q&A, celebrity recognition, writing poetry, summarizing multiple images, product comparison, math problem solving, etc; |
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- In order to break the current limitation of GPT4 in terms of direct image input, TouchStone provides fine-grained image annotations by human labeling. These detailed annotations, along with the questions and the model's output, are then presented to GPT4 for scoring. |
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- The benchmark includes both English and Chinese versions. |
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The results of the evaluation are as follows: |
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Qwen-VL outperforms current SOTA generalist models on multiple VL tasks and has a more comprehensive coverage in terms of capability range. |
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<p align="center"> |
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<img src="https://qianwen-res.oss-cn-beijing.aliyuncs.com/Qwen-VL/assets/radar.png" width="600"/> |
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<p> |
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### 零样本图像描述 & 通用视觉问答 (Zero-shot Captioning & General VQA) |
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<table> |
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<thead> |
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<tr> |
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<th rowspan="2">Model type</th> |
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<th rowspan="2">Model</th> |
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<th colspan="2">Zero-shot Captioning</th> |
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<th colspan="5">General VQA</th> |
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</tr> |
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<tr> |
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<th>NoCaps</th> |
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<th>Flickr30K</th> |
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<th>VQAv2<sup>dev</sup></th> |
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<th>OK-VQA</th> |
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<th>GQA</th> |
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<th>SciQA-Img<br>(0-shot)</th> |
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<th>VizWiz<br>(0-shot)</th> |
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</tr> |
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</thead> |
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<tbody align="center"> |
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<tr> |
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<td rowspan="10">Generalist<br>Models</td> |
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<td>Flamingo-9B</td> |
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<td>-</td> |
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<td>61.5</td> |
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<td>51.8</td> |
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<td>44.7</td> |
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<td>-</td> |
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<td>-</td> |
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<td>28.8</td> |
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</tr> |
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<tr> |
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<td>Flamingo-80B</td> |
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<td>-</td> |
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<td>67.2</td> |
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<td>56.3</td> |
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<td>50.6</td> |
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<td>-</td> |
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<td>-</td> |
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<td>31.6</td> |
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</tr> |
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<tr> |
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<td>Unified-IO-XL</td> |
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<td>100.0</td> |
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<td>-</td> |
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<td>77.9</td> |
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<td>54.0</td> |
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<td>-</td> |
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<td>-</td> |
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<td>-</td> |
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</tr> |
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<tr> |
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<td>Kosmos-1</td> |
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<td>-</td> |
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<td>67.1</td> |
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<td>51.0</td> |
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<td>-</td> |
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<td>-</td> |
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<td>-</td> |
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<td>29.2</td> |
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</tr> |
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<tr> |
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<td>Kosmos-2</td> |
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<td>-</td> |
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<td>66.7</td> |
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<td>45.6</td> |
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<td>-</td> |
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<td>-</td> |
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<td>-</td> |
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<td>-</td> |
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</tr> |
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<tr> |
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<td>BLIP-2 (Vicuna-13B)</td> |
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<td>103.9</td> |
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<td>71.6</td> |
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<td>65.0</td> |
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<td>45.9</td> |
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<td>32.3</td> |
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<td>61.0</td> |
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<td>19.6</td> |
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</tr> |
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<tr> |
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<td>InstructBLIP (Vicuna-13B)</td> |
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<td><strong>121.9</strong></td> |
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<td>82.8</td> |
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<td>-</td> |
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<td>-</td> |
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<td>49.5</td> |
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<td>63.1</td> |
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<td>33.4</td> |
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</tr> |
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<tr> |
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<td>Shikra (Vicuna-13B)</td> |
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<td>-</td> |
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<td>73.9</td> |
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<td>77.36</td> |
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<td>47.16</td> |
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<td>-</td> |
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<td>-</td> |
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<td>-</td> |
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</tr> |
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<tr> |
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<td><strong>Qwen-VL (Qwen-7B)</strong></td> |
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<td>121.4</td> |
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<td><b>85.8</b></td> |
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<td><b>78.8</b></td> |
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<td><b>58.6</b></td> |
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<td><b>59.3</b></td> |
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<td>67.1</td> |
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<td>35.2</td> |
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</tr> |
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<!-- <tr> |
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<td>Qwen-VL (4-shot)</td> |
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<td>-</td> |
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<td>-</td> |
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<td>-</td> |
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<td>63.6</td> |
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<td>-</td> |
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<td>-</td> |
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<td>39.1</td> |
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</tr> --> |
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<tr> |
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<td>Qwen-VL-Chat</td> |
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<td>120.2</td> |
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<td>81.0</td> |
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<td>78.2</td> |
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<td>56.6</td> |
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<td>57.5</td> |
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<td><b>68.2</b></td> |
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<td><b>38.9</b></td> |
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</tr> |
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<!-- <tr> |
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<td>Qwen-VL-Chat (4-shot)</td> |
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<td>-</td> |
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<td>-</td> |
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<td>-</td> |
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<td>60.6</td> |
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<td>-</td> |
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<td>-</td> |
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<td>44.45</td> |
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</tr> --> |
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<tr> |
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<td>Previous SOTA<br>(Per Task Fine-tuning)</td> |
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<td>-</td> |
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<td>127.0<br>(PALI-17B)</td> |
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<td>84.5<br>(InstructBLIP<br>-FlanT5-XL)</td> |
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<td>86.1<br>(PALI-X<br>-55B)</td> |
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<td>66.1<br>(PALI-X<br>-55B)</td> |
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<td>72.1<br>(CFR)</td> |
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<td>92.53<br>(LLaVa+<br>GPT-4)</td> |
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<td>70.9<br>(PALI-X<br>-55B)</td> |
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</tr> |
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</tbody> |
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</table> |
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- 在 Zero-shot Caption 中,Qwen-VL 在 Flickr30K 数据集上取得了 **SOTA** 的结果,并在 Nocaps 数据集上取得了和 InstructBlip 可竞争的结果。 |
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- 在 General VQA 中,Qwen-VL 取得了 LVLM 模型同等量级和设定下 **SOTA** 的结果。 |
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- For zero-shot image captioning, Qwen-VL achieves the **SOTA** on Flickr30K and competitive results on Nocaps with InstructBlip. |
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- For general VQA, Qwen-VL achieves the **SOTA** under the same generalist LVLM scale settings. |
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### 文本导向的视觉问答 (Text-oriented VQA) |
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<table> |
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<thead> |
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<tr> |
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<th>Model type</th> |
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<th>Model</th> |
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<th>TextVQA</th> |
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<th>DocVQA</th> |
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<th>ChartQA</th> |
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<th>AI2D</th> |
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<th>OCR-VQA</th> |
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</tr> |
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</thead> |
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<tbody align="center"> |
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<tr> |
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<td rowspan="5">Generalist Models</td> |
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<td>BLIP-2 (Vicuna-13B)</td> |
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<td>42.4</td> |
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<td>-</td> |
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<td>-</td> |
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<td>-</td> |
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<td>-</td> |
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</tr> |
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<tr> |
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<td>InstructBLIP (Vicuna-13B)</td> |
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<td>50.7</td> |
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<td>-</td> |
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<td>-</td> |
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<td>-</td> |
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<td>-</td> |
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</tr> |
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<tr> |
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<td>mPLUG-DocOwl (LLaMA-7B)</td> |
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<td>52.6</td> |
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<td>62.2</td> |
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<td>57.4</td> |
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<td>-</td> |
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<td>-</td> |
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</tr> |
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<tr> |
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<td>Pic2Struct-Large (1.3B)</td> |
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<td>-</td> |
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<td><b>76.6</b></td> |
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<td>58.6</td> |
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<td>42.1</td> |
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<td>71.3</td> |
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</tr> |
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<tr> |
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<td>Qwen-VL (Qwen-7B)</td> |
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<td><b>63.8</b></td> |
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<td>65.1</td> |
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<td><b>65.7</b></td> |
|
<td><b>62.3</b></td> |
|
<td><b>75.7</b></td> |
|
</tr> |
|
<tr> |
|
<td>Specialist SOTAs<br>(Specialist/Finetuned)</td> |
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<td>PALI-X-55B (Single-task FT)<br>(Without OCR Pipeline)</td> |
|
<td>71.44</td> |
|
<td>80.0</td> |
|
<td>70.0</td> |
|
<td>81.2</td> |
|
<td>75.0</td> |
|
</tr> |
|
</tbody> |
|
</table> |
|
|
|
- 在文字相关的识别/问答评测上,取得了当前规模下通用 LVLM 达到的最好结果。 |
|
- 分辨率对上述某几个评测非常重要,大部分 224 分辨率的开源 LVLM 模型无法完成以上评测,或只能通过切图的方式解决。Qwen-VL 将分辨率提升到 448,可以直接以端到端的方式进行以上评测。Qwen-VL 在很多任务上甚至超过了 1024 分辨率的 Pic2Struct-Large 模型。 |
|
- In text-related recognition/QA evaluation, Qwen-VL achieves the SOTA under the generalist LVLM scale settings. |
|
- Resolution is important for several above evaluations. While most open-source LVLM models with 224 resolution are incapable of these evaluations or can only solve these by cutting images, Qwen-VL scales the resolution to 448 so that it can be evaluated end-to-end. Qwen-VL even outperforms Pic2Struct-Large models of 1024 resolution on some tasks. |
|
|
|
### 细粒度视觉定位 (Referring Expression Comprehension) |
|
|
|
<table> |
|
<thead> |
|
<tr> |
|
<th rowspan="2">Model type</th> |
|
<th rowspan="2">Model</th> |
|
<th colspan="3">RefCOCO</th> |
|
<th colspan="3">RefCOCO+</th> |
|
<th colspan="2">RefCOCOg</th> |
|
<th>GRIT</th> |
|
</tr> |
|
<tr> |
|
<th>val</th> |
|
<th>test-A</th> |
|
<th>test-B</th> |
|
<th>val</th> |
|
<th>test-A</th> |
|
<th>test-B</th> |
|
<th>val-u</th> |
|
<th>test-u</th> |
|
<th>refexp</th> |
|
</tr> |
|
</thead> |
|
<tbody align="center"> |
|
<tr> |
|
<td rowspan="8">Generalist Models</td> |
|
<td>GPV-2</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>51.50</td> |
|
</tr> |
|
<tr> |
|
<td>OFA-L*</td> |
|
<td>79.96</td> |
|
<td>83.67</td> |
|
<td>76.39</td> |
|
<td>68.29</td> |
|
<td>76.00</td> |
|
<td>61.75</td> |
|
<td>67.57</td> |
|
<td>67.58</td> |
|
<td>61.70</td> |
|
</tr> |
|
<tr> |
|
<td>Unified-IO</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td><b>78.61</b></td> |
|
</tr> |
|
<tr> |
|
<td>VisionLLM-H</td> |
|
<td></td> |
|
<td>86.70</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
<td>-</td> |
|
</tr> |
|
<tr> |
|
<td>Shikra-7B</td> |
|
<td>87.01</td> |
|
<td>90.61</td> |
|
<td>80.24 </td> |
|
<td>81.60</td> |
|
<td>87.36</td> |
|
<td>72.12</td> |
|
<td>82.27</td> |
|
<td>82.19</td> |
|
<td>69.34</td> |
|
</tr> |
|
<tr> |
|
<td>Shikra-13B</td> |
|
<td>87.83 </td> |
|
<td>91.11</td> |
|
<td>81.81</td> |
|
<td>82.89</td> |
|
<td>87.79</td> |
|
<td>74.41</td> |
|
<td>82.64</td> |
|
<td>83.16</td> |
|
<td>69.03</td> |
|
</tr> |
|
<tr> |
|
<td>Qwen-VL-7B</td> |
|
<td><b>89.36</b></td> |
|
<td>92.26</td> |
|
<td><b>85.34</b></td> |
|
<td><b>83.12</b></td> |
|
<td>88.25</td> |
|
<td><b>77.21</b></td> |
|
<td>85.58</td> |
|
<td>85.48</td> |
|
<td>78.22</td> |
|
</tr> |
|
<tr> |
|
<td>Qwen-VL-7B-Chat</td> |
|
<td>88.55</td> |
|
<td><b>92.27</b></td> |
|
<td>84.51</td> |
|
<td>82.82</td> |
|
<td><b>88.59</b></td> |
|
<td>76.79</td> |
|
<td><b>85.96</b></td> |
|
<td><b>86.32</b></td> |
|
<td>-</td> |
|
<tr> |
|
<td rowspan="3">Specialist SOTAs<br>(Specialist/Finetuned)</td> |
|
<td>G-DINO-L</td> |
|
<td>90.56 </td> |
|
<td>93.19</td> |
|
<td>88.24</td> |
|
<td>82.75</td> |
|
<td>88.95</td> |
|
<td>75.92</td> |
|
<td>86.13</td> |
|
<td>87.02</td> |
|
<td>-</td> |
|
</tr> |
|
<tr> |
|
<td>UNINEXT-H</td> |
|
<td>92.64 </td> |
|
<td>94.33</td> |
|
<td>91.46</td> |
|
<td>85.24</td> |
|
<td>89.63</td> |
|
<td>79.79</td> |
|
<td>88.73</td> |
|
<td>89.37</td> |
|
<td>-</td> |
|
</tr> |
|
<tr> |
|
<td>ONE-PEACE</td> |
|
<td>92.58 </td> |
|
<td>94.18</td> |
|
<td>89.26</td> |
|
<td>88.77</td> |
|
<td>92.21</td> |
|
<td>83.23</td> |
|
<td>89.22</td> |
|
<td>89.27</td> |
|
<td>-</td> |
|
</tr> |
|
</tbody> |
|
</table> |
|
|
|
- 在定位任务上,Qwen-VL 全面超过 Shikra-13B,取得了目前 Generalist LVLM 模型上在 Refcoco 上的 **SOTA**。 |
|
- Qwen-VL 并没有在任何中文定位数据上训练过,但通过中文 Caption 数据和 英文 Grounding 数据的训练,可以 Zero-shot 泛化出中文 Grounding 能力。 |
|
|
|
我们提供了以上**所有**评测脚本以供复现我们的实验结果。请阅读 [eval/EVALUATION.md](eval/EVALUATION.md) 了解更多信息。 |
|
|
|
- Qwen-VL achieves the **SOTA** in all above referring expression comprehension benchmarks. |
|
- Qwen-VL has not been trained on any Chinese grounding data, but it can still generalize to the Chinese Grounding tasks in a zero-shot way by training Chinese Caption data and English Grounding data. |
|
|
|
We provide all of the above evaluation scripts for reproducing our experimental results. Please read [eval/EVALUATION.md](eval/EVALUATION.md) for more information. |
|
|
|
### 闲聊能力测评 (Chat Evaluation) |
|
|
|
TouchStone 是一个基于 GPT4 打分来评测 LVLM 模型的图文对话能力和人类对齐水平的基准。它涵盖了 300+张图片、800+道题目、27个类别,包括基础属性、人物地标、视觉推理、诗歌创作、故事写作、商品比较、图片解题等**尽可能广泛的类别**。关于 TouchStone 的详细介绍,请参考[touchstone/README_CN.md](touchstone/README_CN.md)了解更多信息。 |
|
|
|
TouchStone is a benchmark based on scoring with GPT4 to evaluate the abilities of the LVLM model on text-image dialogue and alignment levels with humans. It covers a total of 300+ images, 800+ questions, and 27 categories, such as attribute-based Q&A, celebrity recognition, writing poetry, summarizing multiple images, product comparison, math problem solving, etc. Please read [touchstone/README_CN.md](touchstone/README.md) for more information. |
|
|
|
#### 英语 (English) |
|
|
|
| Model | Score | |
|
|---------------|-------| |
|
| PandaGPT | 488.5 | |
|
| MiniGPT4 | 531.7 | |
|
| InstructBLIP | 552.4 | |
|
| LLaMA-AdapterV2 | 590.1 | |
|
| mPLUG-Owl | 605.4 | |
|
| LLaVA | 602.7 | |
|
| Qwen-VL-Chat | 645.2 | |
|
|
|
#### 中文 (Chinese) |
|
|
|
| Model | Score | |
|
|---------------|-------| |
|
| VisualGLM | 247.1 | |
|
| Qwen-VL-Chat | 401.2 | |
|
|
|
Qwen-VL-Chat 模型在中英文的对齐评测中均取得当前 LVLM 模型下的最好结果。 |
|
|
|
Qwen-VL-Chat has achieved the best results in both Chinese and English alignment evaluation. |
|
<br> |
|
|
|
## 常见问题 (FAQ) |
|
|
|
如遇到问题,敬请查阅 [FAQ](https://github.com/QwenLM/Qwen-VL/blob/master/FAQ_zh.md)以及issue区,如仍无法解决再提交issue。 |
|
|
|
If you meet problems, please refer to [FAQ](https://github.com/QwenLM/Qwen-VL/blob/master/FAQ.md) and the issues first to search a solution before you launch a new issue. |
|
<br> |
|
|
|
## 使用协议 (License Agreement) |
|
|
|
研究人员与开发者可使用Qwen-VL和Qwen-VL-Chat或进行二次开发。我们同样允许商业使用,具体细节请查看[LICENSE](https://github.com/QwenLM/Qwen-VL/blob/master/LICENSE)。如需商用,请填写[问卷](https://dashscope.console.aliyun.com/openModelApply/qianwen)申请。 |
|
|
|
Researchers and developers are free to use the codes and model weights of both Qwen-VL and Qwen-VL-Chat. We also allow their commercial use. Check our license at [LICENSE](LICENSE) for more details. |
|
<br> |
|
|
|
## 引用 (Citation) |
|
|
|
如果你觉得我们的论文和代码对你的研究有帮助,请考虑:star: 和引用 :pencil: :) |
|
|
|
If you find our paper and code useful in your research, please consider giving a star :star: and citation :pencil: :) |
|
|
|
```BibTeX |
|
@article{Qwen-VL, |
|
title={Qwen-VL: A Frontier Large Vision-Language Model with Versatile Abilities}, |
|
author={Bai, Jinze and Bai, Shuai and Yang, Shusheng and Wang, Shijie and Tan, Sinan and Wang, Peng and Lin, Junyang and Zhou, Chang and Zhou, Jingren}, |
|
journal={arXiv preprint arXiv:2308.12966}, |
|
year={2023} |
|
} |
|
``` |
|
<br> |
|
|
|
## 联系我们 (Contact Us) |
|
|
|
如果你想给我们的研发团队和产品团队留言,请通过邮件(qianwen[email protected])联系我们。 |
|
|
|
If you are interested to leave a message to either our research team or product team, feel free to send an email to qianwen_[email protected]. |
|
|
|
``` |
|
|
|
``` |
|
|
|
|