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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >An improved box-counting method for image fractal dimension estimation
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An improved box-counting method for image fractal dimension estimation

机译:一种改进的盒形分形维数估计方法

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摘要

Fractal dimension (FD) is a useful feature for texture segmentation, shape classification, and graphic analysis in many fields. The box-counting approach is one of the frequently used techniques to estimate the FD of an image. This paper presents an efficient box-counting-based method for the improvement of FD estimation accuracy. A new model is proposed to assign the smallest number of boxes to cover the entire image surface at each selected scale as required, thereby yielding more accurate estimates. The experiments using synthesized fractional Brownian motion images, real texture images, and remote sensing images demonstrate this new method can outperform the well-known differential boxing-counting (DBC) method.
机译:分形维数(FD)是许多领域中纹理分割,形状分类和图形分析的有用功能。盒计数方法是估计图像的FD的常用技术之一。本文提出了一种有效的基于盒数的方法来提高FD估计精度。提出了一种新模型,可根据需要在每个选定的比例尺上分配最少数量的盒子以覆盖整个图像表面,从而产生更准确的估计值。使用合成的分数布朗运动图像,真实纹理图像和遥感图像进行的实验表明,该新方法可以胜过众所周知的差分装箱计数(DBC)方法。

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