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A segmentation and classification algorithm for online detection of internal disorders in citrus using X-ray radiographs

机译:X射线射线照相技术在线检测柑橘内部疾病的分割和分类算法

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摘要

Oranges and lemons can be affected by the physiological disorders granulation and endoxerosis respectively, decreasing their commercial value. X-ray radiographs provide images of the internal structure of citrus on which the disorders can be discerned. An image processing algorithm is proposed to detect these disorders on X-ray projection images and classify samples as being affected or not. The method automatically segments healthy and affected tissue, calculates a set of image features and uses these to classify the images using a naive Bayes or KNN classifier. The developed method avoids the need for labour-intensive destructive sampling and allows for non-destructive inspection of all fruits while preventing losses due to destructive sampling. The proposed algorithm classifies 95.7% of oranges and 93.6% of lemons correctly. The classification method is fast, robust to noise and can be applied to any existing inline X-ray radiograph equipment. (C) 2015 Elsevier B.V. All rights reserved.
机译:橙子和柠檬分别会受到生理性颗粒化和内氧化作用的影响,从而降低其商业价值。 X射线射线照相提供可辨别疾病的柑橘内部结构的图像。提出了一种图像处理算法来检测X射线投影图像上的这些异常并将样本分类为受影响或不受影响。该方法自动分割健康和受影响的组织,计算一组图像特征,并使用这些特征通过朴素的贝叶斯或KNN分类器对图像进行分类。所开发的方法避免了对劳动密集型破坏性采样的需要,并允许对所有水果进行非破坏性检查,同时防止由于破坏性采样而造成的损失。所提出的算法正确分类了95.7%的桔子和93.6%的柠檬。该分类方法快速,抗噪声,可应用于任何现有的在线X射线照相设备。 (C)2015 Elsevier B.V.保留所有权利。

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