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Hyperspectral Imaging for Presymptomatic Detection of Tobacco Disease with Successive Projections Algorithm and Machine-learning Classifiers

机译:利用连续投影算法和机器学习分类器对症状进行烟草前症状检测的高光谱成像

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摘要

We investigated the feasibility and potentiality of presymptomatic detection of tobacco disease using hyperspectral imaging, combined with the variable selection method and machine-learning classifiers. Images from healthy and TMV-infected leaves with 2, 4, and 6 days post infection were acquired by a pushbroom hyperspectral reflectance imaging system covering the spectral range of 380–1023 nm. Successive projections algorithm was evaluated for effective wavelengths (EWs) selection. Four texture features, including contrast, correlation, entropy, and homogeneity were extracted according to grey-level co-occurrence matrix (GLCM). Additionally, different machine-learning algorithms were developed and compared to detect and classify disease stages with EWs, texture features and data fusion respectively. The performance of chemometric models with data fusion manifested better results with classification accuracies of calibration and prediction all above 80% than those only using EWs or texture features; the accuracies were up to 95% employing back propagation neural network (BPNN), extreme learning machine (ELM), and least squares support vector machine (LS-SVM) models. Hence, hyperspectral imaging has the potential as a fast and non-invasive method to identify infected leaves in a short period of time (i.e. 48 h) in comparison to the reference images (5 days for visible symptoms of infection, 11 days for typical symptoms).
机译:我们研究了使用高光谱成像结合变量选择方法和机器学习分类器对症状进行烟草疾病前检测的可行性和潜力。健康和经TMV感染的叶片在感染后第2、4和6天的图像是通过pushbroom高光谱反射成像系统获得的,其光谱范围为380–1023 nm。评估了连续投影算法的有效波长(EWs)选择。根据灰度共生矩阵(GLCM)提取了四个纹理特征,包括对比度,相关性,熵和同质性。此外,还开发并比较了不同的机器学习算法,以分别利用电子战,纹理特征和数据融合对疾病阶段进行检测和分类。与仅使用电子战或纹理特征的化学计量学模型相比,具有数据融合的化学计量学模型表现出更好的结果,其校准和预测的分类精度均在80%以上;使用反向传播神经网络(BPNN),极限学习机(ELM)和最小二乘支持向量机(LS-SVM)模型,其准确性高达95%。因此,与参考图像(可见感染症状为5天,典型症状为11天)相比,高光谱成像有可能作为一种快速且非侵入性的方法在短时间内(即48 h)识别感染叶片)。

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