作者人数
标签数量
内容状态
原文 + 中文
同页查看标题和摘要的双语信息
PDF 预览
直接在详情页阅读或下载论文全文
深度分析
继续下钻到 AI 生成的结构化解读
摘要 / Abstract
Robotic disassembly of complex mating components often renders pinch grasping infeasible, necessitating multi-fingered enveloping grasps. However, visual occlusions and geometric constraints complicate teaching appropriate grasp motions when relying solely on 2D camera feeds. To address this, we propose an affordance-guided teleoperation method that pre-generates enveloping grasp candidates via physics simulation. These Affordance Templates (ATs) are visualized with a color gradient reflecting grasp quality to augment operator perception. Simulations demonstrate the method's generality across various components. Real-robot experiments validate that AT-based visual augmentation enables operators to effectively select and teach enveloping grasp strategies for real-world disassembly, even under severe visual and geometric constraints.
分类 / Categories
深度分析
AI 深度理解论文内容,生成具有洞见性的总结