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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Comparing cooccurrence probabilities and Markov random fields for texture analysis of SAR sea ice imagery
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Comparing cooccurrence probabilities and Markov random fields for texture analysis of SAR sea ice imagery

机译:比较共现概率和Markov随机场以进行SAR海冰图像纹理分析

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This paper compares the discrimination ability of two texture analysis methods: Markov random fields (MRFs) and gray-level cooccurrence probabilities (GLCPs). There exists limited published research comparing different texture methods, especially with regard to segmenting remotely sensed imagery. The role of window size in texture feature consistency and separability as well as the role in handling of multiple textures within a window are investigated. Necessary testing is performed on samples of synthetic (MRF generated), Brodatz, and synthetic aperture radar (SAR) sea ice imagery. GLCPs are demonstrated to have improved discrimination ability relative to MRFs with decreasing window size, which is important when performing image segmentation. On the other hand, GLCPs are more sensitive to texture boundary confusion than MRFs given their respective segmentation procedures.
机译:本文比较了两种纹理分析方法的判别能力:马尔可夫随机场(MRF)和灰度共现概率(GLCP)。有限的研究比较了不同的纹理方法,尤其是在分割遥感图像方面。研究了窗口大小在纹理特征一致性和可分离性中的作用,以及在处理窗口中的多个纹理中的作用。对合成(生成MRF),Brodatz和合成孔径雷达(SAR)海冰图像的样本进行了必要的测试。 GLCP被证明具有相对于MRF更好的辨别能力,具有减小的窗口大小,这在执行图像分割时很重要。另一方面,考虑到它们各自的分割过程,GLCP比MRF对纹理边界混淆更为敏感。

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