--- language: - en - ru license: mit library_name: other tags: - spiking-neural-network - object-detection - event-based - yolo - neuromorphic pipeline_tag: object-detection --- # TWL Spike Yolo **TWL Spike Yolo** is a spiking neural network (SNN) for real-time object detection based on event-based vision. The model adapts the YOLOv8 architecture to work with streams of event data, allowing efficient processing in neuromorphic computing environments. This approach leverages the low-latency and power-efficient properties of SNNs to detect objects in fast-changing visual scenes. The model also explores multimodal fusion by combining event-based and frame-based inputs to enhance detection accuracy under challenging conditions such as motion blur or low light. ## Highlights - **Architecture**: YOLOv8-inspired spiking neural network. - **Input**: Event data from neuromorphic (event-based) cameras; optionally combined with standard image frames. - **Use case**: High-speed, low-latency object detection with improved energy efficiency. - **Applications**: Robotics, autonomous driving, surveillance, and edge devices using neuromorphic hardware. ## Source Code The implementation, training scripts, and inference tools are available in the GitHub repository: 👉 [https://github.com/KirillHit/twl_spike_yolo](https://github.com/KirillHit/twl_spike_yolo) ---