Surface defect detection and classification in mandarin fruits using fuzzy image thresholding, binary wavelet transform and linear classifier model

Anandhanarayanan Kamalakannan, G. Rajamanickam
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引用次数: 11

Abstract

Machine vision systems with effective image processing methods are used in quality grading of agricultural products. A pattern recognition technique was developed to detect and classify surface defects such as pitting, splitting and stem-end rot found in images of mandarin fruits. The developed technique employs fuzzy thresholding for image segmentation, binary wavelet transform (BWT) for feature extraction and a rule based linear classifier model for detection and classification of the defects. The moment invariants computed from the detail subimage of BWT were taken as feature values. This paper in detail describes about the pattern recognition algorithm and its implementation. The detection and classification results obtained from the algorithm are reported and discussed.
基于模糊图像阈值、二值小波变换和线性分类器模型的柑桔表面缺陷检测与分类
具有有效图像处理方法的机器视觉系统被用于农产品质量分级。提出了一种模式识别技术,对柑桔果实图像中的点蚀、劈裂、茎端腐病等表面缺陷进行检测和分类。该技术采用模糊阈值法进行图像分割,二值小波变换(BWT)进行特征提取,基于规则的线性分类器模型对缺陷进行检测和分类。将小波变换的细节子图像计算得到的矩不变量作为特征值。本文详细介绍了模式识别算法及其实现。对该算法的检测和分类结果进行了报道和讨论。
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