GKNet:抓取关键点网络,用于抓取候选对象的检测

IF 7.5 1区 计算机科学 Q1 ROBOTICS International Journal of Robotics Research Pub Date : 2021-06-16 DOI:10.1177/02783649211069569
Ruinian Xu, Fu-Jen Chu, P. Vela
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引用次数: 19

摘要

当前的抓握检测方法采用深度学习来实现对传感器和目标模型不确定性的鲁棒性。两种主要的方法要么设计抓握质量评分,要么设计基于锚点的抓握识别网络。本文提出了一种不同的抓取检测方法,将其视为图像空间中的关键点检测。深度网络将每个抓点候选检测为一对关键点,可转换为抓点表示g = {x,y,w,θ} T,而不是角点的三重或四重奏。通过将关键点分组成对来降低检测难度,从而提高性能。为了促进捕获关键点之间的依赖关系,在网络设计中加入了一个非本地模块。最后一种基于离散和连续方向预测的滤波策略消除了错误对应,进一步提高了抓取检测性能。本文提出的GKNet方法在Cornell和缩短的Jacquard数据集上实现了准确率和速度之间的良好平衡(分别为96.9%和98.39%,分别为41.67和23.26 fps)。在机械臂上的后续实验中,通过四种类型的抓取实验来评估GKNet,这些实验反映了不同的干扰源:静态抓取、动态抓取、不同相机角度的抓取和拾取垃圾箱。GKNet在静态和动态抓取实验中优于参考基线,同时显示出对不同相机视点和适度杂波的鲁棒性。结果证实了一个假设,即抓取关键点是深度抓取网络的有效输出表示,对预期的干扰因素提供鲁棒性。
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GKNet: Grasp keypoint network for grasp candidates detection
Contemporary grasp detection approaches employ deep learning to achieve robustness to sensor and object model uncertainty. The two dominant approaches design either grasp-quality scoring or anchor-based grasp recognition networks. This paper presents a different approach to grasp detection by treating it as keypoint detection in image-space. The deep network detects each grasp candidate as a pair of keypoints, convertible to the grasp representation g = {x,y,w,θ} T , rather than a triplet or quartet of corner points. Decreasing the detection difficulty by grouping keypoints into pairs boosts performance. To promote capturing dependencies between keypoints, a non-local module is incorporated into the network design. A final filtering strategy based on discrete and continuous orientation prediction removes false correspondences and further improves grasp detection performance. GKNet, the approach presented here, achieves a good balance between accuracy and speed on the Cornell and the abridged Jacquard datasets (96.9% and 98.39% at 41.67 and 23.26 fps). Follow-up experiments on a manipulator evaluate GKNet using four types of grasping experiments reflecting different nuisance sources: static grasping, dynamic grasping, grasping at varied camera angles, and bin picking. GKNet outperforms reference baselines in static and dynamic grasping experiments while showing robustness to varied camera viewpoints and moderate clutter. The results confirm the hypothesis that grasp keypoints are an effective output representation for deep grasp networks that provide robustness to expected nuisance factors.
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来源期刊
International Journal of Robotics Research
International Journal of Robotics Research 工程技术-机器人学
CiteScore
22.20
自引率
0.00%
发文量
34
审稿时长
6-12 weeks
期刊介绍: The International Journal of Robotics Research (IJRR) has been a leading peer-reviewed publication in the field for over two decades. It holds the distinction of being the first scholarly journal dedicated to robotics research. IJRR presents cutting-edge and thought-provoking original research papers, articles, and reviews that delve into groundbreaking trends, technical advancements, and theoretical developments in robotics. Renowned scholars and practitioners contribute to its content, offering their expertise and insights. This journal covers a wide range of topics, going beyond narrow technical advancements to encompass various aspects of robotics. The primary aim of IJRR is to publish work that has lasting value for the scientific and technological advancement of the field. Only original, robust, and practical research that can serve as a foundation for further progress is considered for publication. The focus is on producing content that will remain valuable and relevant over time. In summary, IJRR stands as a prestigious publication that drives innovation and knowledge in robotics research.
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