Handling non-rigid objects using robot hands necessities a framework that does not only incorporate human-level dexterity and cognition but also the multi-sensory information and system dynamics for robust and fine interactions. In this research, our previously developed kernelized synergies framework, inspired from human behaviour on reusing same subspace for grasping and manipulation, is augmented with visuo-tactile perception for autonomous and flexible adaptation to unknown objects. To detect objects and estimate their poses, a simplified visual pipeline using RANSAC algorithm with Euclidean clustering and SVM classifier is exploited. To modulate interaction efforts while grasping and manipulating non-rigid objects, the tactile feedback using T40S shokac chip sensor, generating 3D force information, is incorporated. Moreover, different kernel functions are examined in the kernelized synergies framework, to evaluate its performance and potential against task reproducibility, execution, generalization and synergistic re-usability. Experiments performed with robot arm-hand system validates the capability and usability of upgraded framework on stably grasping and dexterously manipulating the non-rigid objects.
翻译:使用机器人手处理非硬性物体需要一个框架,它不仅包括人类层次的极易性和认知性,而且包括多感官信息和系统动态,以促进稳健和精细的互动。在这一研究中,我们以前开发的内心化的协同增效框架,源于人类利用同一子空间再利用同一子空间进行抓取和操纵的行为,通过对自主和灵活适应未知物体的透视性认知而得到加强。为了探测物体并估计其容貌,利用欧洲环球公司集群和SVM分类器的RANSAC算法简化了视觉管道。在掌握和操纵非硬性物体的同时调整互动努力,采用了T40S Shokac芯传感器的触动反馈,生成了3D力信息。此外,还在内心化的协同增效框架内审查了不同的内核功能,以评价其性能和潜力,防止任务再生性、执行、一般化和协同性再可用性。与机器人手臂系统进行的实验验证了对非硬性掌握和激光操纵物体进行升级框架的能力和实用性。