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MULTISPECTRAL DETECTION OF CITRUS CANKER USING HYPERSPECTRAL BAND SELECTION

机译:高光谱谱带选择技术对柑橘溃疡病的多光谱检测

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摘要

The citrus industry has need for effective and efficient approaches to remove fruits with canker before they are shipped to selective international markets. This research was aimed to develop a nudtispectral method to inspect citrus canker based on band selections of the hyperspectral image data. A total of 960 Ruby Red grapefruits with normal surface, canker; and five common peel diseases including greasy spot, insect damage, melanose, scab, and wind scar were collected during a seven-month harvest period. Hyperspectral reflectance images were acquired in the spectral region of 450 to 930 nm. Correlation analysis (CA) and principal component analysis (PCA) were used for hyperspectral band selections. The canker detection capabilities of the selected bands were evaluated and compared based on the classifications of the pixels in the selected regions of interest (ROIs) of all the peel conditions. A two-band ratio using wavelengths of 729 and 834 nun selected by CA (R834/R729) gave the best overall classification accuracy (95.1%) for the ROI pixel classification, while the highest accuracy using the PCA-selected bands (R907/R718) was 93.1%. CA band selection outperformed PCA in terms of classification performance owing to its supervised nature. The accuracies for three-band and four-band ratios formed by a sequential forward CA selection approach were lower than that of the two-band ratio. Based on the ratio of R834/R729, algorithms for multispectral image processing and classification were developed to differentiate canker from other peel conditions. The overall classification accuracy on a sample basis was 95.7%. The two-band ratio images have great potential to be adopted by a multispectral imaging system for real-time citrus canker detection.
机译:柑桔产业需要一种有效且有效的方法,以将水果通过鳞茎去除,然后再运往特定的国际市场。这项研究旨在开发一种基于高光谱图像数据的波段选择的核谱方法来检查柑橘溃疡病。共有960颗表面正常的红宝石葡萄柚,呈溃疡状;在七个月的收获期内收集了五种常见的果皮病,包括油腻斑,虫害,黑色素,结sc和风疤。在450至930nm的光谱区域中获得高光谱反射图像。相关分析(CA)和主成分分析(PCA)用于高光谱波段选择。基于所有剥离条件的选定感兴趣区域(ROI)中像素的分类,评估并比较了选定波段的溃疡检测能力。 CA选择的使用729和834 nun波长的两波段比率(R834 / R729)给出了ROI像素分类的最佳总体分类精度(95.1%),而使用PCA选择的波段(R907 / R718)则具有最高的精度)为93.1%。由于其监督性质,CA波段选择在分类性能方面优于PCA。通过顺序正向CA选择方法形成的三频段和四频段比率的精度低于两频段比率的精度。基于R834 / R729的比率,开发了用于多光谱图像处理和分类的算法,以区分溃疡病与其他剥离条件。以样本为基础的整体分类准确度是95.7%。两波段比率图像具有巨大的潜力,可以被多光谱成像系统用于实时柑橘溃疡病检测。

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