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Moldy Peanut Kernel Identification Using Wavelet Spectral Features Extracted from Hyperspectral Images

机译:使用从高光谱图像中提取的小波谱特征的发霉花生核识别

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摘要

Moldy peanuts may contain aflatoxin, a highly carcinogenic substance that threatens the health of humans and livestock. This study aimed to identify moldy peanuts using hyperspectral measurements and continuous wavelet transform (CWT). Peanuts were allowed to develop mold in a simulation of natural process of fungal infection; detailed hyperspectral images of healthy and moldy peanuts were captured. Based on these spectral data, CWT with separability analysis was conducted, generating a Jeffries-Matusita distance scalogram that summarized the separability of the wavelet power at different wavelengths and the decomposition scales between healthy and moldy peanuts. Using thresholding, five wavelet features (WFs) were isolated to identify moldy peanuts. In addition, seven optimal bands obtained from a successive projection algorithm were compared with the WFs. Partial least squares discrimination analysis (PLS-DA) and support vector machines (SVM) were adopted as classifiers for evaluating the WFs and optimal bands. The results show that according to the WFs, both PLS-DA and SVMs achieved higher overall classification results (at least 96.19% for the test data) than those using optimal bands selected via the successive projection algorithm (SPA). The CWT was found to be a promising method for analyzing the fungal infection of peanuts.
机译:发霉的花生可能含有黄曲霉毒素,一种威胁人类和牲畜健康的高致癌物质。本研究旨在识别使用高光谱测量和连续小波变换(CWT)的发霉花生。允许花生在真菌感染的自然过程模拟中开发模具;捕获了健康和发霉花生的详细的高光谱图像。基于这些光谱数据,进行了具有可分离性分析的CWT,产生Jeffries-Matusita距离标量程,总结了小波功率在不同波长下的可分离性,并且在健康和发霉的花生之间的分解尺度。使用阈值处理,分离五个小波特征(WFS)以识别发霉的花生。另外,将从连续投影算法获得的七个最佳条带与WFS进行了比较。局部最小二乘歧视分析(PLS-DA)和支持向量机(SVM)被用作评估WFS和最佳频带的分类器。结果表明,根据WFS,PLS-DA和SVMS都比通过连续投影算法(SPA)选择的最佳条带的总体分类结果(测试数据至少为96.19%)。发现CWT是分析花生真菌感染的有希望的方法。

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