Classification model of seed cotton grade based on least square support vector machine regression method

Si Chen, Li-na Ling, Rong-chang Yuan, Long-qing Sun
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引用次数: 3

Abstract

Grade classification of seed cotton is a major problem that has an significant impact on the agricultural economy. According to characteristics like impurities, yellowness and brightness that extract from images of seed cotton, constructing classification model of seed cotton base on the least square method. Using support vector machine regression to come up with a well improved algorithm. After full learning, seed cotton classification accuracy satisfy the actual application needs.
基于最小二乘支持向量机回归方法的种棉品级分类模型
种棉等级分级是影响我国农业经济的重大问题。根据从籽棉图像中提取的杂质、黄度、亮度等特征,基于最小二乘法构建籽棉分类模型。利用支持向量机回归提出了一种很好的改进算法。经过充分学习,种棉分类精度满足实际应用需要。
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