DIJE: Dense Image Jacobian Estimation for Robust Robotic Self-Recognition and Visual Servoing

Yasunori Toshimitsu, Kento Kawaharazuka, Akihiro Miki, K. Okada, M. Inaba
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Abstract

For robots to move in the real world, they must first correctly understand the state of its own body and the tools that it holds. In this research, we propose DIJE, an algorithm to estimate the image Jacobian for every pixel. It is based on an optical flow calculation and a simplified Kalman Filter that can be efficiently run on the whole image in real time. It does not rely on markers nor knowledge of the robotic structure. We use the DIJE in a self-recognition process which can robustly distinguish between movement by the robot and by external entities, even when the motion overlaps. We also propose a visual servoing controller based on DIJE, which can learn to control the robot's body to conduct reaching movements or bimanual tool-tip control. The proposed algorithms were implemented on a physical musculoskeletal robot and its performance was verified. We believe that such global estimation of the visuomotor policy has the potential to be extended into a more general framework for manipulation.
鲁棒机器人自识别与视觉伺服的密集图像雅可比估计
为了让机器人在现实世界中移动,它们必须首先正确地了解自己身体的状态和它所持有的工具。在这项研究中,我们提出了DIJE,一种估计图像雅可比矩阵的算法。它是基于光流计算和简化的卡尔曼滤波,可以有效地在整个图像上实时运行。它不依赖于标记,也不依赖于对机器人结构的了解。我们在自我识别过程中使用DIJE,即使运动重叠,也可以鲁棒地区分机器人和外部实体的运动。我们还提出了一种基于DIJE的视觉伺服控制器,该控制器可以学习控制机器人的身体进行到达运动或手动刀尖控制。在一个物理肌肉骨骼机器人上实现了该算法,并对其性能进行了验证。我们相信,这种视觉运动策略的全局估计有可能扩展到更一般的操作框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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