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A Robo-vision Algorithm for Automatic Harvesting ofGreen Bell Pepper

机译:绿色甜椒自动收获机器人视觉算法

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One of the main concerns of greenhouse growers is the cost for labor-intensive tasks including planting, monitoring, spraying and most importantly harvesting. Within the last two decades, there have been great efforts for developing automatic harvesting robots, but they are not commercialized yet. There is a need to conduct further research about different aspects of robots. Machine vision is one major aspect of a harvesting robot, and generally is inseparable part of robot automation. The main objective of this study was to develop a vision system that is simple, low-cost but effective with a reasonable accuracy for detecting bell pepper in greenhouse. Green bell pepper was chosen not only for its nutrient importance but also for its challenging segmentation due to color similarity between samples of interest and leaves. To overcome this challenge, images were firstly segmented into objects. In the next step, texture characteristic as one of the object-based features was utilized to segment objects into smooth and rough classes. Categorized smooth objects were then classified into plant and non-plant regions using adjusted thresholds of color indices of hue, saturation and Excessive Green Index (EGI). This approach produced promising classification results on images taken under natural light for ultimate purpose of automatic harvesting. The algorithm could recognize 94 out of 108 (detection accuracy of 87%) bell peppers located within workspace of robot.
机译:温室种植者的主要问题之一是劳动密集型任务的成本,包括种植,监测,喷涂和最重要的收获。在过去的二十年中,开发自动收获机器人的努力很大,但它们尚未商业化。有必要对机器人的不同方面进行进一步的研究。机器视觉是收获机器人的一个主要方面,通常是机器人自动化的不可分割的一部分。本研究的主要目的是开发一种简单,低成本但有效的视觉系统,以合理的准确性为温室检测甜椒。由于其营养样本与叶子之间的颜色相似,因此不仅选择了绿色甜椒,而且还为其养育重要性而选择了它的挑战性细分。为了克服这一挑战,首先将图像分段为对象。在下一步中,利用基于对象的特征之一的纹理特性将对象分段为平滑且粗糙的类。然后使用调整后的色调,饱和度和过量的绿色指数(EGI)的调整后的阈值分类为植物和非植物区分类为植物和非植物区域。这种方法产生了有希望的分类结果,用于在自然光线下采取的图像,以实现自动收获的最终目的。该算法可以识别108中的94个(检测精度为87%)贝辣椒,位于机器人的工作空间内。

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