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Efficient Collision Detection Framework for Enhancing Collision-Free Robot Motion

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Fast and efficient collision detection is essential for motion generation in robotics. In this paper, we propose an efficient collision detection framework based on the Signed Distance Field (SDF) of robots, seamlessly integrated with a self-collision detection module. Firstly, we decompose the robot's SDF using forward kinematics and leverage multiple extremely lightweight networks in parallel to efficiently approximate the SDF. Moreover, we introduce support vector machines to integrate the self-collision detection module into the framework, which we refer to as the SDF-SC framework. Using statistical features, our approach unifies the representation of collision distance for both SDF and self-collision detection. During this process, we maintain and utilize the differentiable properties of the framework to optimize collision-free robot trajectories. Finally, we develop a reactive motion controller based on our framework, enabling real-time avoidance of multiple dynamic obstacles. While maintaining high accuracy, our framework achieves inference speeds up to five times faster than previous methods. Experimental results on the Franka robotic arm demonstrate the effectiveness of our approach.

Xiankun Zhu, Yucheng Xin, Shoujie Li, Houde Liu, Chongkun Xia, Bin Liang• 2024

Related benchmarks

TaskDatasetResultRank
Motion Planning6-DoF xArm robot in PyBullet Simulation
Collision Checks Count3.25e+3
6
Motion Planning2-link arm
Collision Checks2.12e+3
6
Motion Planningreal 6-DoF xArm robot v1 (20 randomized trials)
Collision Checks5.91e+3
5
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