A Closed-Chain Approach to Generating Affordance Joint Trajectories for Robotic Manipulators
Janak Panthi, Farshid Alambeigi, Mitch Pryor
- 发表年份
- 2025
- 引用次数
- 1
摘要
Robots operating in unpredictable environments require versatile, hardware-agnostic frameworks capable of adapting to various tasks. While a recent screw-based affordance approach shows promise, it faces challenges in avoiding undesirable configurations, singularity navigation, and task success prediction. To address these limitations, we propose a novel framework that incorporates gripper orientation control and generates complete joint trajectories in real time for screw-based task affordance execution. Our method models the affordance and manipulator as a closed-chain mechanism, introducing an innovative approach to solving closed-chain inverse kinematics. It encapsulates task constraints and simplifies task definitions, while remaining hardware and robot agnostic, robust to errors, and invariant to the initial grasp. We validate our framework with simulations on a UR5 robot and real-world implementation on a Boston Dynamics Spot robot. Our experiments demonstrate rapid joint trajectory generation (0.0077 to 0.098 seconds) for various tasks, including a 420-degree valve turn with consideration of the gripper orientation. Comparison with the state-of-the-art methods shows a 4x improvement in planning time, reduced joint movement and achievement of greater task goals.
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