A comparative analysis of color features for classification of bulk chilli

M. Sajjan, Lingangouda Kulkarni, B. Anami, N. G. Gaddagimath
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引用次数: 1

Abstract

The Paper work presents an approaches to classify chilli class from their bulk sample chilli images using RGB and HSI and L∗a∗b Model colour features. A rule based algorithm is implemented taking into account, best RGB, HSI and L∗a∗b colour features, 9 colour features were computed for R-(red), G-(green), B-(Blue), H-(hue), S-(saturation), I-(intensity), L-(brightness), a-(chromaticity layer red&green), b-(chromaticity layer blue&yellow) images from each image samples. Best features were used as an input to classifier and tests were performed to identify best classification model. R-Average, Hue-Average, a-average Hue-mean, L∗_mean, a∗_mean and standard deviation values are considered for Rule Based Classification, We have considered four different varieties of Chilli, with stalk and without stalk. The recognition rate for RGB colour features chilli with stalk is 70.% and for chilli without stalk is 85% is obtained. The recognition rate for HSI colour features, chilli with stalk is 80% and for chilli without stalk is 90% is obtained. The recognition rate for L∗a∗b colour features chilli with stalk is 85% and for chilli without stalk is 95% is obtained.
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散装辣椒颜色特征分类的比较分析
论文工作提出了一种方法来分类辣椒类从他们的散装样本辣椒图像使用RGB和HSI和L * a * b模型颜色特征。考虑到最佳的RGB、HSI和L * A * b颜色特征,实现了一种基于规则的算法,对每个图像样本中的R-(红色)、G-(绿色)、b-(蓝色)、H-(色调)、S-(饱和度)、I-(强度)、L-(亮度)、A -(色度层红与绿)、b-(色度层蓝与黄)图像计算了9个颜色特征。使用最佳特征作为分类器的输入,并进行测试以确定最佳分类模型。基于规则的分类考虑了R-Average, Hue-Average, a-average Hue-mean, L∗_mean, a∗_mean和标准差值。我们考虑了四种不同的辣椒品种,有茎和没有茎。带柄辣椒RGB颜色特征的识别率为70。%,而无茎辣椒则为85%。该方法对HSI颜色特征的识别率为80%,对无柄辣椒的识别率为90%。对L * a * b颜色特征有柄辣椒的识别率为85%,对无柄辣椒的识别率为95%。
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