College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China.
Key Laboratory of Spectroscopy Sensing, Ministry of Agriculture, Hangzhou 310058, China.
Sensors (Basel). 2017 Oct 27;17(11):2470. doi: 10.3390/s17112470.
Striped stem-borer (SSB) infestation is one of the most serious sources of damage to rice growth. A rapid and non-destructive method of early SSB detection is essential for rice-growth protection. In this study, hyperspectral imaging combined with chemometrics was used to detect early SSB infestation in rice and identify the degree of infestation (DI). Visible/near-infrared hyperspectral images (in the spectral range of 380 nm to 1030 nm) were taken of the healthy rice plants and infested rice plants by SSB for 2, 4, 6, 8 and 10 days. A total of 17 characteristic wavelengths were selected from the spectral data extracted from the hyperspectral images by the successive projection algorithm (SPA). Principal component analysis (PCA) was applied to the hyperspectral images, and 16 textural features based on the gray-level co-occurrence matrix (GLCM) were extracted from the first two principal component (PC) images. A back-propagation neural network (BPNN) was used to establish infestation degree evaluation models based on full spectra, characteristic wavelengths, textural features and features fusion, respectively. BPNN models based on a fusion of characteristic wavelengths and textural features achieved the best performance, with classification accuracy of calibration and prediction sets over 95%. The accuracy of each infestation degree was satisfactory, and the accuracy of rice samples infested for 2 days was slightly low. In all, this study indicated the feasibility of hyperspectral imaging techniques to detect early SSB infestation and identify degrees of infestation.
条螟为害是影响水稻生长的最严重因素之一。因此,需要一种快速、无损的早期条螟检测方法,以保护水稻的生长。本研究采用高光谱成像结合化学计量学方法,对早期条螟为害水稻进行检测,并识别为害程度(DI)。对健康水稻植株和条螟为害 2、4、6、8 和 10 天的水稻植株进行可见/近红外高光谱图像(光谱范围 380nm 至 1030nm)采集。通过连续投影算法(SPA)从高光谱图像中提取光谱数据,共选择了 17 个特征波长。对高光谱图像进行主成分分析(PCA),并从前两个主成分(PC)图像中提取基于灰度共生矩阵(GLCM)的 16 个纹理特征。利用反向传播神经网络(BPNN)分别基于全谱、特征波长、纹理特征和特征融合建立为害程度评价模型。基于特征波长和纹理特征融合的 BPNN 模型表现出最佳性能,其校准集和预测集的分类准确率均超过 95%。各为害程度的准确率均令人满意,为害 2 天的水稻样本的准确率略低。总之,本研究表明高光谱成像技术在早期条螟为害检测和为害程度识别方面具有可行性。