Target Recognition and Optimal Grasping Based on Deep Learning

Qingquan Lin, Dan Chen
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引用次数: 4

Abstract

The difficulty of robot in three-dimensional target recognition and optimal grasping is the complex background environment and the irregular shape of the target object. The robot is required to identify the best grasping pose of the target like a human while identifying different three-dimensional objects posture. A deep learning method based on the cascaded faster-rcnn model to identify the target object and its optimal grasping posture is proposed in this paper. First, the improved faster-rcnn model is used to identify the object and determine its approximate position. Then, the other faster-rcnn model is used to find the optimal grasping pose of the target, and complete robot's optimal grasp. Experiments show that the method can quickly and accurately find the target object and determine its optimal grasping pose.
基于深度学习的目标识别与最优抓取
复杂的背景环境和不规则的目标形状是机器人三维目标识别和最佳抓取的难点。要求机器人在识别不同的三维物体姿态时,能像人类一样识别目标的最佳抓取姿态。提出了一种基于级联快速rcnn模型的深度学习方法来识别目标物体及其最优抓取姿态。首先,利用改进的faster-rcnn模型对目标进行识别并确定其近似位置;然后,利用另一种快速rcnn模型找到目标的最优抓取姿态,完成机器人的最优抓取。实验表明,该方法可以快速准确地找到目标物体并确定其最佳抓取姿态。
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