基于连体卷积神经网络的机械手视觉伺服

Gaofeng Deng, Shan Liu
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引用次数: 0

摘要

针对传统基于图像的视觉伺服(IBVS)对特征提取和特征匹配的要求,提出了一种基于Siamese卷积神经网络的机械手视觉伺服算法。该算法将当前图像和期望图像同时输入网络,并输出两幅图像之间的相对位姿差。通过位姿差构建闭环控制系统,控制机械手末端执行器到达所需位置抓取目标工件。同时,为了满足训练神经网络所需的大量数据,提出了一种自动生成数据集的算法,避免了人工对数据集的采集和标注,大大节省了成本。通过与传统的基于特征点的IBVS进行比较,仿真结果表明了该方法的有效性和准确性,抓取实验表明了该方法在实际应用中的可行性。
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Siamese Convolutional Neural Network Based Visual Servo for Manipulator
A visual servo algorithm based on Siamese Convolution Neural Network is proposed for the manipulator to avoid the requirement of feature extraction and feature matching in the traditional image-based visual servo (IBVS). The algorithm feeds the current image and the desired image into the network at the same time, and outputs the relative pose difference between the two images. A closed-loop control system is constructed through the pose difference, and control the end-effector of the manipulator to reach the desired position to grasp the target workpiece. Meanwhile, in order to meet the large amount of data needed in training the neural network, an algorithm to automatically generate the data set is proposed, which can avoid manual collection and labeling of the data set and greatly save the cost. The simulations show the effectiveness and accuracy of the proposed method by comparing with the traditional feature point based IBVS, and the grasping experiment shows the feasibility of the proposed method in actual practice.
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