基于多类支持向量机的水稻秸秆识别

P. Vithu, J. Anitha, K. Raimond, J. Moses
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引用次数: 2

摘要

采用彩色机器视觉系统对水稻中有机、无机杂质、品种掺合物(水稻品种KPL 1)和籽粒掺合物(全去皮黑克)进行识别。图像采集系统由CMOS相机、LED环形照明和采样平台组成。利用多类支持向量机(SVM)分类器设计了船坞类型识别模型,对船坞类型进行识别和分类。该算法考虑了所获取图像的5个形态学特征和9个颜色特征,结果显示总体分类准确率为90.3%。水稻、有机和无机杂质、品种混合物和杂粮混合物的平均分类准确率分别为85%、83.2%、93%、98%和93.6%。该方法可作为一种快速、无损的基于视觉属性的稻谷质量评价方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of dockage in paddy using multiclass SVM
A colour machine vision system was used for identification of dockage including organic and inorganic impurities, varietal admixture (paddy variety KPL 1) and grain admixture (whole undehulled black gram) in paddy. The image acquisition system consisted of a CMOS camera, LED ring lighting and a sample platform. A dockage identification model was designed for identification and classification of dockage types using multi-class support vector machine (SVM) classifier. The algorithm considered 5 morphological and 9 colour features from the acquired images and results showed an overall classification accuracy of 90.3%. The mean classification accuracies for paddy, organic and inorganic impurities, varietal admixture and grain admixture were 85%, 83.2%, 93%, 98% and 93.6%, respectively. This approach can be used as a rapid, non-destructive quality evaluation technique for paddy based on visual attributes.
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