用于机械臂抓取的物体姿态估计方法

Cheng Huang, Shuyu Hou
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摘要

为了解决平面抓取任务中的目标检测问题,提出了一种基于 YOLO-Pose 的位置和姿态估计方法。其目的是实时检测航天器中心点的三维位置和平面二维姿态。首先,通过迁移学习训练权重,并通过分析航天器的形状特征优化关键点的数量,以提高姿态信息的代表性。其次,在主干网络的 C3 模块中集成了 CBAM 双通道注意机制,以提高姿态估计的准确性。此外,还使用了 Wing Loss 函数来缓解关键点随机偏移的问题。在颈部网络中加入双向特征金字塔网络(BiFPN)结构,进一步提高了目标检测的准确性。实验结果表明,优化算法的平均精度值有所提高。平均检测速度能满足实际捕获任务对速度和精度的要求,具有实际应用价值。
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Object pose estimation method for robotic arm grasping
To address the issue of target detection in the planar grasping task, a position and attitude estimation method based on YOLO-Pose is proposed. The aim is to detect the three-dimensional position of the spacecraft’s center point and the planar two-dimensional attitude in real time. First, the weight is trained through transfer learning, and the number of key points is optimized by analyzing the shape characteristics of the spacecraft to improve the representation of pose information. Second, the CBAM dual-channel attention mechanism is integrated into the C3 module of the backbone network to improve the accuracy of pose estimation. Furthermore, the Wing Loss function is used to mitigate the problem of random offset in key points. The incorporation of the bi-directional feature pyramid network (BiFPN) structure into the neck network further improves the accuracy of target detection. The experimental results show that the average accuracy value of the optimized algorithm has increased. The average detection speed can meet the speed and accuracy requirements of the actual capture task and has practical application value.
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