A Machine Vision System based on RGB-D Image Analysis for the Artichoke Seedling Grading Automation According to Leaf Area

P. L. Otoya, S. P. Gardini
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引用次数: 2

Abstract

In this work, the development of a machine vision system based on RGB-D image analysis for artichoke seedling grading is described as well as its integration into a robot with the capability to handle seedlings, moving them from an unclassified plug tray to a classified one. First, the seedling RGB-D image acquisition procedure is implemented. Second, the leaf area estimation algorithm is developed, which comprises an RGB-D image segmentation algorithm and the execution of a triangulation algorithm with the points inside each region defined by the segmentation as input. Then, this area is used to assess a seedling’s quality. Third, the performance and the working conditions of the machine vision system are analyzed. Fourth, the developed system is integrated into a robotic platform that has the capability of handling and moving a seedling according to the results of the machine vision system. Finally, the results are discussed and several ways to improve the system are put forward.
基于RGB-D图像分析的洋蓟苗木叶面积分级自动化机器视觉系统
在这项工作中,描述了基于RGB-D图像分析的机器视觉系统的开发,用于洋蓟幼苗分级,并将其集成到具有处理幼苗能力的机器人中,将它们从未分类的塞盘移动到分类的塞盘。首先,实现了种子RGB-D图像采集程序。其次,开发了叶面积估计算法,该算法包括RGB-D图像分割算法和以分割定义的每个区域内的点作为输入执行三角剖分算法。然后,这个区域被用来评估幼苗的质量。第三,对机器视觉系统的性能和工作条件进行了分析。第四,将开发的系统集成到机器人平台中,根据机器视觉系统的结果,该平台具有搬运和移动幼苗的能力。最后,对结果进行了讨论,并提出了改进系统的几种方法。
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