Color Matching Based Approach for Robotic Grasping

Marwan Qaid Mohammed, L. Kwek, S. C. Chua, Esmail Ai Alandoli
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引用次数: 2

Abstract

Object grasping is a basic but difficult task in robotic manipulation due to various object size, shapes and other properties. The problem becomes more challenging when the robot has to reach for and grasp a particular object in cluttered environments. To this end, the color of object can be one of the important features for identifying the target object to be picked up. In this paper, we investigate an approach of training a robot so that it is able to locate the target object by matching its color, and goes on to pick up the object in an unsupervised learning manner. The proposed approach is divided into two parts: 1) a semantic segmentation module that locates the target object by segmenting the color image and creates a mask on the predicted target object, 2) an object pose estimation module that predicts the optimal grasp position of target object based on a deep reinforcement learning framework. The proposed approach was evaluated with various testing scenarios of handling single and multiple colored target objects. The experimental simulation results indicate that the suggested approach achieves an overall success rate of 92% in the grasping task.
基于颜色匹配的机器人抓取方法
由于物体的大小、形状和其他特性的不同,物体抓取是机器人操作中一项基本但又困难的任务。当机器人必须在混乱的环境中伸手去抓一个特定的物体时,这个问题变得更具挑战性。为此,物体的颜色可以作为识别要拾取的目标物体的重要特征之一。在本文中,我们研究了一种训练机器人的方法,使其能够通过匹配目标物体的颜色来定位目标物体,并以无监督的学习方式继续拾取目标物体。该方法分为两部分:1)语义分割模块,通过分割彩色图像来定位目标物体,并在预测的目标物体上创建掩码;2)基于深度强化学习框架的目标姿态估计模块,预测目标物体的最佳抓取位置。通过处理单个和多个彩色目标物体的各种测试场景对所提出的方法进行了评估。实验仿真结果表明,该方法在抓取任务中的总体成功率为92%。
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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