Real‐Time Control of a Humanoid Robot for Whole‐Body Tactile Interaction
Simon Armleder, Florian Bergner, J. Rogelio Guadarrama-Olvera, Jun Nakanishi, Gordon Cheng
- 发表年份
- 2025
- 引用次数
- 1
- 访问权限
- 开放获取
摘要
Enabling robots to interact physically with complex, unstructured environments remains a significant challenge. Methods relying solely on joint‐torque sensing suffer from ambiguity in multicontact scenarios, while vision is prone to occlusion. This article presents an approach using a whole‐body tactile skin sensor network to address these limitations by integrating feedback for compliance, force control, and collision avoidance. The control framework uses quadratic programming to integrate rich tactile and proximity feedback from the skin network. To maintain real‐time performance with this dense sensory data, the method clusters sensor activations into active regions. This enables the robot to generate whole‐body compliance, regulate interaction forces across various body parts, and transform proximity feedback into distance constraints to dynamically avoid collisions in unmodeled environments. The effectiveness and real‐time feasibility of this approach are demonstrated through experiments on a humanoid robot performing tasks such as transporting bulky objects, controlling interaction forces, and avoiding dynamic obstacles.
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