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Prof. Robot: Differentiable Robot Rendering Without Static and Self-Collisions

About

Differentiable rendering has gained significant attention in the field of robotics, with differentiable robot rendering emerging as an effective paradigm for learning robotic actions from image-space supervision. However, the lack of physical world perception in this approach may lead to potential collisions during action optimization. In this work, we introduce a novel improvement on previous efforts by incorporating physical awareness of collisions through the learning of a neural robotic collision classifier. This enables the optimization of actions that avoid collisions with static, non-interactable environments as well as the robot itself. To facilitate effective gradient optimization with the classifier, we identify the underlying issue and propose leveraging Eikonal regularization to ensure consistent gradients for optimization. Our solution can be seamlessly integrated into existing differentiable robot rendering frameworks, utilizing gradients for optimization and providing a foundation for future applications of differentiable rendering in robotics with improved reliability of interactions with the physical world. Both qualitative and quantitative experiments demonstrate the necessity and effectiveness of our method compared to previous solutions.

Quanyuan Ruan, Jiabao Lei, Wenhao Yuan, Yanglin Zhang, Dekun Lu, Guiliang Liu, Kui Jia• 2025

Related benchmarks

TaskDatasetResultRank
Visual-goal motion planningFranka 1.5 rad bin 1.0 (test)
Success Rate12.2
4
Visual-goal motion planningFranka 2.0 rad bin 1.0 (test)
Success Rate (SR)5.3
4
Visual-goal motion planningFranka 2.5 rad bin 1.0 (test)
Success Rate2
4
Visual-goal motion planningUR5e 0.5 rad bin 1.0 (test)
Success Rate (SR)71
4
Visual-goal motion planningUR5e 2.5 rad bin 1.0 (test)
Success Rate4
4
Visual-goal motion planningFetch 2.0 rad bin 1.0 (test)
Success Rate5.2
4
Visual-goal motion planningFranka 0.5 rad bin 1.0 (test)
Success Rate (SR)71.2
4
Visual-goal motion planningFranka rad bin 1.0 (test)
Success Rate27.3
4
Visual-goal motion planningFranka Avg. 1.0 (test)
Success Rate (SR)23.6
4
Visual-goal motion planningUR5e 1.0 rad bin (test)
Success Rate (SR)40.2
4
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