Automatic segmentation of fruits in CIELuv color space image using hill climbing optimization and fuzzy C-Means clustering

P. Ganesan, B. Sathish, G. Sajiv
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引用次数: 6

Abstract

In this paper, a novel method for the segmentation and extraction of natural fruits using Hill climbing (HC) optimization and Modified Fuzzy C-Means (MFCM) clustering algorithm is proposed. The intensity and color information is highly correlated in RGB color images. The segmentation in RGB color space does not produce the meaningful outcome for the segmentation and information retrieval. Many authors have proposed different color space for the segmentation and retrieval of information. In this color based segmentation technique, RGB color images had transformed into perceptually uniform, device independent CIELuv color space for the efficient segmentation. Then for the CIELuv image, the color histogram had generated and computed. This color histogram acts as a search space and has a number of bins. In this work, Hill climbing (HC) optimization had applied for the identification of best image pixels (peaks) which correspond to the initial number of seeds or clusters for the segmentation process. These initial seeds had applied to MFCM for the segmentation of fruits in CIELuv color images. The experimental result had compared with the segmentation process in RGB color space to demonstrate the efficiency of the proposed approach.
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基于爬坡优化和模糊c均值聚类的CIELuv彩色空间图像水果自动分割
本文提出了一种基于Hill climb (HC)优化和改进模糊c均值(MFCM)聚类算法的天然水果分割与提取新方法。在RGB彩色图像中,强度和颜色信息高度相关。在RGB颜色空间中进行分割不能产生有意义的分割结果和信息检索。许多作者提出了不同的颜色空间来分割和检索信息。在这种基于颜色的分割技术中,RGB彩色图像被转换成感知上一致的、与设备无关的CIELuv颜色空间,从而实现了高效的分割。然后对CIELuv图像进行颜色直方图的生成和计算。这个颜色直方图作为一个搜索空间,有许多箱子。在这项工作中,爬山(HC)优化应用于识别最佳图像像素(峰值),这些像素(峰值)对应于分割过程中种子或聚类的初始数量。将这些初始种子应用于MFCM,用于CIELuv彩色图像中果实的分割。实验结果与RGB颜色空间的分割过程进行了比较,验证了该方法的有效性。
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