少镜头目标检测在机器人感知中的应用

T.K. Shashank , N. Hitesh , H.S. Gururaja
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引用次数: 3

摘要

机器人感知的目标检测技术对机器人执行其功能任务起着至关重要的作用。本文提出了一种高效、准确的机器人目标检测方法。本文提出利用注意力网络和注意力RPN模块实现机器人视觉的少镜头目标检测网络。多关系检测器用于比较两帧,并从帧中消除负面对象,从而进一步强化所建议的模型。采用对比训练策略,利用少镜头支撑框架和查询框架之间的相似性对机器人进行训练,以检测正面目标并消除负面目标。提出这种方法是为了帮助机器人感知感兴趣的对象来执行拾取,放置和各种其他动作。本文利用COCO数据集对包含近1000个不同类别的网络进行训练。这种方法将有助于加速工业4.0,并具有广泛的应用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of few-shot object detection in robotic perception

An object detection technique for robotic perception plays a vital role for robots to perform the task that it is functioned to do. In this paper, an efficient and accurate method for object detection for robots is proposed. The paper suggests implementing Few-shot object detection network for robotic vision using the Attention network and attention RPN module. The Multi-relation detector is used to compare two frames and eliminate negative objects from the frame which further enforces the suggested model. Using Contrastive training strategy, the robot is trained to exploit the resemblance between the few-shot support frame and query frame to detect the positive objects and eliminate the negative objects. This method is proposed to help robots perceive the object of interest to perform pick, place, and various other actions. This paper utilizes the COCO dataset to train the network which contains close to 1000 different categories. This method would help accelerate industry 4.0 and has potential in a wide range of applications.

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