利用概率密度函数对水果等颜色物体进行分类(PDF)

A. Gopal, R. Subhasree, V. K. Srinivasan, N. Varsha, S. Poobal
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引用次数: 9

摘要

像苹果这样的水果是根据它们的外观(即颜色、大小、形状、表面缺陷的存在)来评估的,因此被分为不同的等级。分级过程有助于实现更好的标准和质量的水果。在许多可用的颜色模型中,HSI模型提供了一种非常有效的颜色评估,特别是用于分析生物制品。人的评估只能提供定性的数据,这种检查既耗时又成本高。具有专门图像处理软件的机器视觉系统提供了一种可能满足需求的解决方案。对187个苹果果实的图像进行了分析,发现基于PDF的中位数进行了分类。为了避免分级时的不匹配,进一步使用直方图交集进行分类,直方图交集确定两幅图像之间的接近度,即相似为1,不相似为0。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of color objects like fruits using probability density function (PDF)
Fruits like apples are valued based on their appearance (i.e. color, sizes, shapes, presence of surface defects) and hence classified into different grades. Grading process helps in achieving better standards and quality of fruits. Of the many available color models, HSI model provides a highly effective color evaluation particularly for analyzing biological products. Human assessment furnishes only qualitative data and such inspection is time consuming and cost-intensive. Machine vision systems with specialized image processing software provide a solution that may satisfy the demand. The analysis was carried out on images of 187 apple fruits, shows that classification done based on median of PDF. In order to avoid the mismatch in grading the same it has been classified further using Histogram Intersection, which determines the closeness between two images i.e. 1 if two images are similar and 0 if they are dissimilar.
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