Image Processing Application on Automatic Fruit Detection for Agriculture Industry

T. Dewi, R. Rusdianasari, R. Kusumanto, Siproni Siproni
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Abstract

The robot brings automation to every sector of human life, including agriculture. Automation in agriculture might be the solution to get a higher quality harvest and less dependency on human farming. The most suitable type of robot for harvesting is an arm robot manipulator. The harvesting robot needs "eye" to "see" the crop/fruit to be harvested. The detection is made possible by using image processing to get the fruit position. The fruit position is the input for a visual servoing robot. The image processing needs to be simple and effective to ensure less computational time to facilitate the limited memory of the available microcontroller. This paper proposes three image processing methods, i.e., image segmentation, edge detection, and blob analysis. The processes were conducted in SCILAB, and three fruit were used as the model, i.e., oranges, grapes, and tomato cherry. The results showed that all the fruit are detected and isolated by the vegetation background.
图像处理在农业工业水果自动检测中的应用
机器人将自动化带到人类生活的各个领域,包括农业。农业自动化可能是获得更高质量收成和减少对人类农业依赖的解决方案。最适合收割的机器人类型是手臂机器人机械手。收割机器人需要“眼睛”来“看到”要收割的作物/水果。通过图像处理得到果实的位置,使检测成为可能。水果位置是视觉伺服机器人的输入。图像处理需要简单有效,以保证较少的计算时间,以方便可用微控制器有限的内存。本文提出了三种图像处理方法,即图像分割、边缘检测和斑点分析。该过程在SCILAB中进行,并以三种水果为模型,即橙子、葡萄和番茄樱桃。结果表明,在植被背景下,所有的果实都被检测和分离出来。
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