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Computing fractal descriptors of texture images using sliding boxes: An application to the identification of Brazilian plant species

机译:使用滑块计算纹理图像的分形描述符:应用于识别巴西植物种类的应用

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摘要

This work proposes a new model based on fractal descriptors for the classification of grayscale texture images. The method consists of scanning the image with a sliding box and collecting statistical information about the pixel distribution. Varying the box size, an estimation of the fractality of the image can be obtained at different scales, providing a more complete description of how such parameter changes in each image. The same strategy is also applied to a especial encoding of the image based on local binary patterns. Descriptors both from the original image and from the local encoding are combined to provide even more precise and robust results in image classification. A statistical model based on the theory of sliding window detection probabilities and Markov transition processes is formulated to explain the effectiveness of the method. The descriptors were tested on the identification of Brazilian plant species using scanned images of the leaf surface. The classification accuracy was also verified on three benchmark databases (KTH-TIPS2-b, UIUC and UMD). The results obtained demonstrate the power of the proposed approach in texture classification and, in particular, in the practical problem of plant species identification. (C) 2019 Elsevier B.V. All rights reserved.
机译:这项工作提出了一种基于分形描述符的新模型,用于分类灰度纹理图像。该方法包括用滑动箱扫描图像并收集有关像素分布的统计信息。改变盒子尺寸,可以在不同的尺度上获得图像的变形的估计,提供了更完整的描述每个图像中的这种参数变化的方式。基于局部二进制模式,还应用于相同的策略应用于图像的特殊编码。从原始图像和本地编码的描述符组合以在图像分类中提供更精确和鲁棒的结果。基于滑动窗口检测概率理论和马尔可夫转换过程的统计模型制定了解释该方法的有效性。使用叶面的扫描图像测试了描述符对巴西植物物种的识别。还在三个基准数据库(kth-tips2-b,Uiuc和Umd)上验证了分类准确性。获得的结果证明了纹理分类中提出的方法的力量,特别是在植物物种鉴定的实际问题中。 (c)2019 Elsevier B.v.保留所有权利。

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