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Cepstrum based feature extraction method for fungus detection

机译:基于倒谱的真菌特征提取方法

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In this paper, a method for detection of popcorn kernels infected by a fungus is developed using image processing. The method is based on two dimensional (2D) mel and Mellin-cepstrum computation from popcorn kernel images. Cepstral features that were extracted from popcorn images are classified using Support Vector Machines (SVM). Experimental results show that high recognition rates of up to 93.93% can be achieved for both damaged and healthy popcorn kernels using 2D mel-cepstrum. The success rate for healthy popcorn kernels was found to be 97.41% and the recognition rate for damaged kernels was found to be 89.43%
机译:在本文中,使用图像处理开发了一种检测被真菌感染的爆米花仁的方法。该方法基于爆米花核图像的二维(2D)mel和Mellin-倒谱。使用支持向量机(SVM)对从爆米花图像提取的倒谱特征进行分类。实验结果表明,使用2D mel-cepstrum可以对受损和健康的爆米花仁实现高达93.93%的高识别率。健康的爆米花籽粒的成功率为97.41%,损坏的籽粒的识别率为89.43%

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