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Statistical Hypothesis Testing and Wavelet Features for Region Segmentation

机译:区域分割的统计假设检测和小波特征

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This paper introduces a novel approach for region segmentation. In order to represent the regions, we devise and test new features based on low and high frequency wavelet coefficients which allow to capture and judge regions using changes in brightness and texture. A fusion process through statistical hypothesis testing among regions is established in order to obtain the final segmentation. The proposed local features are extracted from image data driven by global statistical information. Preliminary experiments show that the approach can segment both texturized and regions cluttered with edges, demonstrating promising results. Hypothesis testing is shown to be effective in grouping even small patches in the process.
机译:本文介绍了一种新的区域细分方法。为了代表这些区域,我们根据低频和高频小波系数设计和测试新功能,允许使用亮度和纹理的变化捕获和判断区域。建立了通过地区统计假设检测的融合过程,以获得最终分割。从由全局统计信息驱动的图像数据中提取所提出的本地特征。初步实验表明,该方法可以将纺织和地区的横跨边缘杂乱,展示有前途的结果。假设检测显示在该过程中分组甚至小斑块是有效的。

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