Sun Ye, Wei Kangli, Liu Qiang, Pan Leiqing, Tu Kang
College of Food Science and Technology, Nanjing Agricultural University, No. 1, Weigang Road, Nanjing 210095, China.
Sensors (Basel). 2018 Apr 23;18(4):1295. doi: 10.3390/s18041295.
Peaches are susceptible to infection from several postharvest diseases. In order to control disease and avoid potential health risks, it is important to identify suitable treatments for each disease type. In this study, the spectral and imaging information from hyperspectral reflectance (400~1000 nm) was used to evaluate and classify three kinds of common peach disease. To reduce the large dimensionality of the hyperspectral imaging, principal component analysis (PCA) was applied to analyse each wavelength image as a whole, and the first principal component was selected to extract the imaging features. A total of 54 parameters were extracted as imaging features for one sample. Three decayed stages (slight, moderate and severe decayed peaches) were considered for classification by deep belief network (DBN) and partial least squares discriminant analysis (PLSDA) in this study. The results showed that the DBN model has better classification results than the classification accuracy of the PLSDA model. The DBN model based on integrated information (494 features) showed the highest classification results for the three diseases, with accuracies of 82.5%, 92.5%, and 100% for slightly-decayed, moderately-decayed and severely-decayed samples, respectively. The successive projections algorithm (SPA) was used to select the optimal features from the integrated information; then, six optimal features were selected from a total of 494 features to establish the simple model. The SPA-PLSDA model showed better results which were more feasible for industrial application. The results showed that the hyperspectral reflectance imaging technique is feasible for detecting different kinds of diseased peaches, especially at the moderately- and severely-decayed levels.
桃子易受多种采后病害感染。为了控制病害并避免潜在的健康风险,确定适合每种病害类型的处理方法很重要。在本研究中,利用高光谱反射率(400~1000 nm)的光谱和成像信息对三种常见的桃子病害进行评估和分类。为降低高光谱成像的高维性,应用主成分分析(PCA)对每个波长图像进行整体分析,并选择第一主成分来提取成像特征。一个样本共提取54个参数作为成像特征。本研究考虑了三个腐烂阶段(轻度、中度和重度腐烂的桃子),通过深度信念网络(DBN)和偏最小二乘判别分析(PLSDA)进行分类。结果表明,DBN模型的分类结果优于PLSDA模型的分类准确率。基于综合信息(494个特征)的DBN模型对三种病害的分类结果最高,轻度、中度和重度腐烂样本的准确率分别为82.5%、92.5%和100%。采用连续投影算法(SPA)从综合信息中选择最优特征;然后,从总共494个特征中选择6个最优特征建立简单模型。SPA-PLSDA模型显示出更好的结果,对工业应用更可行。结果表明,高光谱反射率成像技术对于检测不同种类的患病桃子是可行的,尤其是在中度和重度腐烂水平。