Detection of Fruit Skin Defects Using Machine Vision System

Lu Wang, Anyu Li, Xin Tian
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引用次数: 16

Abstract

External appearance is one of the most significant attributes for fruits when consumers decide to choose or reject them, thus packinghouses need to adopt appropriate systems that are capable of detecting the skin defects for fruits before packing them into batches and reaching the end consumers. For this purpose, this paper proposes a new method to detect fruit skin defects by using machine vision system, which is proved to be more accurate, more robust to color noise and has more modest calculation cost. The color histogram is extracted in the local image patch as image feature, while the Linear SVM (Support vector machine) is used for model learning. In a case of orange inspection, this system realizes a recall rate of 96.7% and a false detection rate of 1.7%.
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利用机器视觉系统检测果皮缺陷
当消费者决定选择或拒绝水果时,外观是水果最重要的属性之一,因此包装厂需要采用适当的系统,能够在包装成批并到达最终消费者之前检测水果的表皮缺陷。为此,本文提出了一种利用机器视觉系统检测果皮缺陷的新方法,该方法精度更高,对颜色噪声的鲁棒性更强,计算成本更低。在局部图像patch中提取颜色直方图作为图像特征,使用线性支持向量机(Linear SVM, Support vector machine)进行模型学习。在橙色检测的情况下,该系统实现了96.7%的召回率和1.7%的误检率。
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