基于计算机视觉的物体识别与自动气动软夹持

Ebrahim Shahabi, Weihao Lu, P. Lin, C. Kuo
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引用次数: 0

摘要

软机器人是近年来发展起来的一个新的机器人分支。软机器人具有重量轻、成本低、制造简单、易于控制等特点。商业产品,如软夹持器,现在可应用于各个领域和应用,如农业,医药,机械等。本文提出了一种新的软机器人抓取方法,利用计算机视觉来寻找物体的形状、大小和角度,以确定最佳抓取方式。采用随机样本一致性(RANSAC)算法迭代选择随机采样的三维点来确定工作平面和识别随机放置的物体。此外,我们还设计并制作了一个3d打印气动软执行器。有效载荷与重量之比约为16。实验表明,所提出的计算机视觉技术和气动软夹持器能够自动识别物体形状并进行软夹持。
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Computer Vision-Based Object Recognition and Automatic Pneumatic Soft Gripping
During recent years, soft robotic is a new sub-class of the robots. Soft robotic has several engaging features, such as lightweight, low cost, simple fabrication, easy control, etc. Commercial products such as soft grippers are now available to apply in various fields and applications, for example, agriculture, medicine, machinery, etc. This paper proposes a novel method of grasping in soft robotic fields using computer vision to find the shape, size, and angle of the object to define the best type of grasping mode. Random Sample Consensus (RANSAC) was used to iteratively select randomly sampled 3D points to determine the working plane and identify the randomly placed object. Furthermore, we designed and fabricated a 3D-printed pneumatic soft actuator. The ratio of payload over weight is around 16. Experiments showed the proposed computer vision techniques and pneumatic soft gripper are capable of automatically recognize the object shape and perform soft gripping.
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