Towards Transferring Grasping from Human to Robot with RGBD Hand Detection

Rong Feng, Camilo Perez, Hong Zhang
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引用次数: 4

Abstract

The task of transferring human knowledge and capabilities to robots is still an open problem. In this paper, we address the problem of transferring human grasping locations of a particular object to a robot manipulator. Using an RGBD sensor, we propose a computer vision based method for human hand detection. This method implements a pixelwise hand detection method with the Random Forest classification algorithm in the color channel. It also creates a kernel-based hand detection method in the depth channel. Based on the theory of joint probability, it fuses both color and depth cues. As a result, this method is able to deal with noisy background and occlusion. Moreover, we apply this method to a grasping task example. In our test, the robot is able to gain the grasping knowledge from visual observation. Our method is complemented with experimental results on the settings of four different sequences with different level of difficulties, and has achieved high performance with respect to hand detection accuracy in comparison with RGB and Depth only methods.
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基于RGBD手部检测的机器人抓取转移研究
将人类的知识和能力转移给机器人的任务仍然是一个悬而未决的问题。在本文中,我们解决了将人类对特定物体的抓取位置传递给机器人机械手的问题。利用RGBD传感器,提出了一种基于计算机视觉的手部检测方法。该方法利用随机森林分类算法在颜色通道上实现了一种像素化的手部检测方法。它还在深度通道中创建了一种基于核的手部检测方法。基于联合概率理论,它融合了颜色和深度线索。因此,该方法能够处理噪声背景和遮挡。并将该方法应用于抓取任务实例。在我们的测试中,机器人能够从视觉观察中获得抓取知识。我们的方法与四种不同难度序列设置的实验结果相补充,与RGB和Depth方法相比,我们的方法在手部检测精度方面取得了较高的性能。
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