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Classification of cereal grains using wavelet, morphological, colour, and textural features of non-touching kernel images

机译:利用小波,形态,颜色和非接触核图像的纹理特征对谷物进行分类

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Images of non-touching kernels of Canada Western Red Spring (CWRS) wheat, Canada Western Amber Durum (CWAD) wheat, barley, oats, and rye were acquired using an area scan camera. Morphological, colour, textural, and wavelet features were extracted from colour images of cereal grains for classification. A total of 51 morphological features, 93 colour features, 56 textural features, and 135 wavelet features were extracted from each kernel. Linear and quadratic statistical classifiers were used for classification using individual types of features and their combinations to find the best feature set and classification method for improved classification of cereal grains. Combining all morphological, colour, textural and wavelet features gave the best classification using the linear discriminant classifier with a classification accuracy of 99.4% for CWRS wheat, followed by 99.3%, 98.6%, 98.5%, and 89.4% for rye, barley, oats, and CWAD wheat, respectively.
机译:使用区域扫描相机采集了加拿大西部红春(CWRS)小麦,加拿大西部琥珀硬质小麦(CWAD)小麦,大麦,燕麦和黑麦的非接触粒的图像。从谷物的彩色图像中提取形态,颜色,质地和小波特征进行分类。从每个核中提取了总共51种形态特征,93种颜色特征,56种纹理特征和135个小波特征。使用线性和二次统计分类器对单个特征类型及其组合进行分类,以找到最佳特征集和分类方法,以改善谷物的分类。使用线性判别分类器将所有形态,颜色,质地和小波特征组合在一起,可以实现最佳分类,CWRS小麦的分类精度为99.4%,其次是黑麦,大麦,燕麦的99.3%,98.6%,98.5%和89.4%和CWAD小麦。

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