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Quad-Partitioning-Based Robotic Arm Guidance Based on Image Data Processing with Single Inexpensive Camera For Precisely Picking Bean Defects in Coffee Industry

机译:基于四处分区的机器人臂指导,基于图像数据处理,单一廉价相机,精确地采摘咖啡业的豆缺陷

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In this paper, we propose a bean defect picking system with the quad-partitioning-based robotic arm guidance method, aimed at automatically and precisely picking bean defects in coffee industry. We assume the adopted inexpensive devices, including a robotic arm, a camera, and an IoT (Internet of Things) device, have only basic functions. For successfully picking the small size of beans as possible, stably moving the arm head to the target bean is the key technique in this topic. To achieve this goal under hardware limits, we design an iterative robotic arm guidance method to move the arm head close to the target with quad-partitioning relationships in the camera's visual space by using image data processing techniques. The error distance after k iterations of the proposed method is approximately estimated as {formula} where d_x and d_y are the width and the length of the field of view. We conduct a case study to validate the proposed method. Testing results show that the proposed system successfully picks bean defects with our proposed robotic arm guidance method.
机译:在本文中,我们提出了一种具有基于四分置的机器人臂指导方法的豆缺陷拣选系统,旨在自动且精确地采用咖啡行业的豆腐缺陷。我们假设采用的廉价设备,包括机器人臂,相机和物联网(物联网)设备,只有基本功能。为了成功地挑选小尺寸的豆类,稳定地将臂向往目标bean是本主题中的关键技术。为了在硬件限制下实现这一目标,我们设计了一种迭代机器人臂指导方法,可以使用相机的视觉空间中的四划线关系移动靠近目标的臂头,通过使用图像数据处理技术。所提出的方法的k迭代之后的误差距离近似估计为{公式}其中d_x和d_y是视野的宽度和长度。我们进行案例研究以验证提出的方法。测试结果表明,建议的系统成功采用了我们提出的机器人臂指导方法挑选了豆缺陷。

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