Point-MoE: Towards Cross-Domain Generalization in 3D Semantic Segmentation via Mixture-of-Experts
Abstract
Point-MoE, a Mixture-of-Experts architecture, enables large-scale, cross-domain generalization in 3D perception by automatically specializing experts without domain labels.
While scaling laws have transformed natural language processing and computer vision, 3D point cloud understanding has yet to reach that stage. This can be attributed to both the comparatively smaller scale of 3D datasets, as well as the disparate sources of the data itself. Point clouds are captured by diverse sensors (e.g., depth cameras, LiDAR) across varied domains (e.g., indoor, outdoor), each introducing unique scanning patterns, sampling densities, and semantic biases. Such domain heterogeneity poses a major barrier towards training unified models at scale, especially under the realistic constraint that domain labels are typically inaccessible at inference time. In this work, we propose Point-MoE, a Mixture-of-Experts architecture designed to enable large-scale, cross-domain generalization in 3D perception. We show that standard point cloud backbones degrade significantly in performance when trained on mixed-domain data, whereas Point-MoE with a simple top-k routing strategy can automatically specialize experts, even without access to domain labels. Our experiments demonstrate that Point-MoE not only outperforms strong multi-domain baselines but also generalizes better to unseen domains. This work highlights a scalable path forward for 3D understanding: letting the model discover structure in diverse 3D data, rather than imposing it via manual curation or domain supervision.
Community
Scaling laws have yet to impact 3D point cloud understanding due to limited data and high domain heterogeneity from diverse sensors and environments. We introduce Point-MoE, the first Mixture-of-Experts (MoE) architecture for 3D, enabling cross-domain generalization without domain labels. Unlike standard backbones that degrade on mixed data, Point-MoE uses top-k routing to specialize experts automatically, outperforming strong baselines and generalizing to unseen domains. This work offers a scalable path for 3D perception by letting models adapt to the diversity of real-world 3D data.
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