首页> 外文会议>2015 IEEE 2nd International Conference on Recent Trends in Information Systems >A lapped transform domain enhanced lee filter with edge detection for speckle noise reduction in SAR images
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A lapped transform domain enhanced lee filter with edge detection for speckle noise reduction in SAR images

机译:具有边缘检测功能的重叠变换域增强Lee滤波器可减少SAR图像中的斑点噪声

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摘要

This paper describes a method which uses Lapped orthogonal transform (LOT) domain adaptive enhanced Lee filter for despeckling SAR images. Since LOT is block transform, the transform coefficients are first remapped into octave type form and then the enhanced Lee filtering is applied to subband LOT coefficients. The motivation of using Lapped transform lies in its ability to preserve oscillatory type of features present in the images like textures. For more edge preservation during despeckling process, the modified ratio of averages (MROA) edge detector is applied to the approximation subband to obtain edge information which is then employed in the proposed framework to obtain edge information in other subbands. Based on this edge information we classify the edge and non edge coefficients in all oriented subbands at various decomposition levels. Experiments using true SAR images show that the LOT domain enhanced Lee filter in proposed edge preserving framework smoothes the speckle very well in homogeneous regions while preserving more edges and texture information. The proposed despeckling filter shows significant improvement over enhanced Lee filtering in spatial and wavelet domain and also outperforms one recent undecimated wavelet domain method.
机译:本文介绍了一种使用重叠正交变换(LOT)域自适应增强Lee滤波器对SAR图像进行散斑的方法。由于LOT是块变换,因此首先将变换系数重新映射为八度音阶形式,然后将增强的Lee滤波应用于子带LOT系数。使用重叠变换的动机在于它能够保留图像中纹理形式的特征的振荡类型。为了在去斑点过程中更多地保留边缘,将改进的平均比率(MROA)边缘检测器应用于近似子带以获得边缘信息,然后在建议的框架中使用该边缘信息来获取其他子带中的边缘信息。基于此边缘信息,我们在各种分解级别将所有定向子带中的边缘系数和非边缘系数分类。使用真实SAR图像的实验表明,在提出的边缘保留框架中,LOT域增强Lee滤波器在均匀区域中很好地平滑了斑点,同时保留了更多的边缘和纹理信息。所提出的去斑点滤波器在空间和小波域上显示出对增强的Lee滤波的显着改进,并且优于最近的一种未抽取小波域方法。

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