A rule-based segmentation method for fruit images under natural illumination

H. Hambali, N. Jamil, Sharifah Lailee Syed Abdullah, H. Harun
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引用次数: 18

Abstract

Image segmentation is a process that significantly important for machine vision system such as automatic fruit grading system. This process separates an image into several areas to extract the interest object from its background. However, the segmentation task is difficult for isolating the images that captured in outdoor environment. This is due to the existence of non-uniform illumination on the object surface. Technically, different illuminations lead to different intensity on the object surface colour. This condition leads to low quality segmented images and therefore reduces the accuracy of object classification. Image segmentation can be accomplished using several methods such as Otsu, K-means and Fuzzy C-means. However, these three traditional methods have limitations in producing accurate segmented areas due to the existence of illumination on the object surface. Therefore, this paper developed a rule-based segmentation method that is able to segment natural images correctly and accurately. This method uses IF-THEN algorithm to segment the images of interest object. All four segmentation methods are implemented on fruit images and their performance are compared based on visual and quantitative evaluations. The analysis results showed that the new method is capable to produce segmented images with high accuracy rate.
自然光照下基于规则的水果图像分割方法
对于水果自动分级等机器视觉系统来说,图像分割是一个非常重要的过程。该过程将图像分成几个区域,从背景中提取感兴趣的对象。然而,对于室外环境中采集的图像,分割任务比较困难。这是由于物体表面存在不均匀的光照。从技术上讲,不同的光照会导致物体表面颜色的强度不同。这种情况导致分割图像质量较低,从而降低了目标分类的准确性。图像分割可以使用Otsu、K-means和Fuzzy C-means等方法来完成。然而,由于物体表面存在光照,这三种传统方法在产生精确的分割区域时存在局限性。因此,本文开发了一种基于规则的分割方法,能够正确、准确地分割自然图像。该方法采用IF-THEN算法对感兴趣目标图像进行分割。在水果图像上实现了四种分割方法,并通过视觉和定量评价对比了四种方法的分割效果。分析结果表明,该方法能够产生具有较高准确率的分割图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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