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Thresholding of noisy shoeprint images based on pixel context

机译:基于像素上下文的嘈杂鞋印图像阈值

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摘要

In a typical shoeprint classification and retrieval system, the first step is to segment meaningful basic shapes and patterns in a noisy shoeprint image. This step has significant influence on shape descriptors and shoeprint indexing in the later stages. In this paper, we extend a recently developed denoising technique proposed by Buades, called non-local mean filtering, to give a more general model. In this model, the expected result of an operation on a pixel can be estimated by performing the same operation on all of its reference pixels in the same image. A working pixel's reference pixels are those pixels whose neighbourhoods are similar to the working pixel's neighbourhood. Similarity is based on the correlation between the local neighbourhoods of the working pixel and the reference pixel. We incorporate a special instance of this general case into thresholding a very noisy shoeprint image. Visual and quantitative comparisons with two benchmarking techniques, by Otsu and Kittler, are conducted in the last section, giving evidence of the effectiveness of our method for thresholding noisy shoeprint images.
机译:在典型的鞋印分类和检索系统中,第一步是在嘈杂的鞋印图像中分割有意义的基本形状和图案。此步骤在以后的阶段对形状描述符和鞋码索引具有重大影响。在本文中,我们扩展了由Buades提出的最近开发的去噪技术,称为非局部均值滤波,以给出更通用的模型。在此模型中,可以通过对同一图像中所有参考像素执行相同的操作来估计该像素的预期操作结果。工作像素的参考像素是那些邻域与工作像素的邻域相似的像素。相似性基于工作像素和参考像素的局部邻域之间的相关性。我们将这种一般情况的特殊情况纳入阈值图像中。在最后一部分中,使用Otsu和Kittler的两种基准测试技术进行了视觉和定量比较,从而证明了我们的方法可以有效地对嘈杂的鞋印图像进行阈值处理。

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