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Citrus canker detection using hyperspectral reflectance imaging and PCA-based image classification method

机译:利用高光谱反射成像和基于PCA的图像分类方法检测柑橘溃疡病

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Citrus canker is one of the most devastating diseases that threaten marketability of citrus crops. Technologies that can efficiently identify citrus canker would assure fruit quality and safety and enhance the competitiveness and profitability of thecitrus industry. This research was aimed to investigate the potential of using hyperspectral imaging technique for detecting canker lesions on citrus fruit. A portable hyperspectral imaging system consisting of an automatic sample handling unit, a lightsource, and a hyperspectral imaging unit was developed for citrus canker detection. The imaging system was used to acquire reflectance images from citrus samples in the wavelength range between 400 and 900 nm. Ruby Red grapefruits with normal and variousdiseased skin conditions including canker, copper burn, greasy spot, wind scar, cake melanose, and specular melanose were tested. Hyperspectral reflectance images were analyzed using principal component analysis (PCA) to compress the 3-D hyperspectral image data and extract useful image features that could be used to discriminate cankerous samples from normal and other diseased samples. Image processing and classification algorithms were developed based upon the transformed images of PCA. The overall accuracy for canker detection was 92.7%. Four optimal wavelengths (553, 677, 718, and 858 nm) were identified in visible and short-wavelength near-infrared region that could be adopted by a future multispectral imaging solution for detecting citrus cankeron a sorting machine. This research demonstrated that hyperspectral imaging technique could be used for discriminating citrus canker from other confounding diseases.
机译:柑橘溃疡病是威胁柑橘类作物适销性的最破坏性疾病之一。可以有效识别柑橘溃疡病的技术将确保水果的质量和安全性,并提高柑橘产业的竞争力和盈利能力。这项研究旨在探讨使用高光谱成像技术检测柑桔溃疡病的潜力。开发了一种由自动样品处理单元,光源和高光谱成像单元组成的便携式高光谱成像系统,用于柑橘溃疡病的检测。该成像系统用于从柑橘样品中获取400至900 nm波长范围内的反射图像。测试了正常和各种疾病皮肤状况的红宝石红葡萄柚,包括溃疡病,铜烧伤,油腻斑点,风疤,蛋糕黑色素和镜面黑色素。使用主成分分析(PCA)分析高光谱反射图像,以压缩3-D高光谱图像数据,并提取有用的图像特征,这些特征可用于区分正常和其他患病样品中的畸形样品。基于PCA的变换图像,开发了图像处理和分类算法。溃疡检测的整体准确性为92.7%。在可见光和短波近红外区域中,确定了四个最佳波长(553、677、718和858 nm),将来的多光谱成像解决方案可以采用这种最佳波长来检测柑橘鳞茎分选机。这项研究表明,高光谱成像技术可用于区分柑橘溃疡病与其他混杂疾病。

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