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首页> 外文期刊>Journal of geophysics and engineering >An adaptive method with integration of multi-wavelet based features for unsupervised classification of SAR images
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An adaptive method with integration of multi-wavelet based features for unsupervised classification of SAR images

机译:基于多小波集成的自适应方法,用于SAR图像的无监督分类

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In single band and single polarized synthetic aperture radar (SAR) images, the information is limited to intensity and texture only and it is very difficult to interpret such SAR images without any a priori information. For unsupervised classification of SAR images, M-band wavelet decomposition is performed on the SAR image and sub-band selection on the basis of energy levels is applied to improve the classification results since sparse representation of sub-bands degrades the performance of classification. Then, textural features are obtained from selected sub-bands and integrated with intensity features. An adaptive neuro-fuzzy algorithm is used to improve computational efficiency by extracting significant features. K-means classification is performed on the extracted features and land features are labeled. This classification algorithm involves user defined parameters. To remove the user dependency and to obtain maximum achievable classification accuracy, an algorithm is developed in this paper for classification accuracy in terms of the parameters involved in the segmentation process. This is very helpful to develop the automated land-cover monitoring system with SAR, where optimized parameters are to be identified only once and these parameters can be applied to SAR imagery of the same scene obtained year after year. A single band, single polarized SAR image is classified into water, urban and vegetation areas using this method and overall classification accuracy is obtained in the range of 85.92%-93.70% by comparing with ground truth data.
机译:在单带和单偏振合成孔径雷达(SAR)图像中,信息仅限于强度和纹理,并且在没有任何先验信息的情况下解释这种SAR图像非常困难。对于SAR图像的无监督分类,在SAR图像上执行M波段小波分解,并且基于能量水平的基础上的子带选择以改善分类结果,因为子频带的稀疏表示降低了分类的性能。然后,从所选的子带获得纹理特征,并与强度特征集成。自适应神经模糊算法用于通过提取显着特征来提高计算效率。 K-means分类是对提取的特征和土地特征进行标记的。该分类算法涉及用户定义的参数。为了消除用户依赖性并获得最大可实现的分类准确性,本文开发了一种算法,用于分割过程中涉及的参数的分类准确性。这非常有助于开发具有SAR的自动覆盖监控系统,其中仅识别了一次优化的参数,并且这些参数可以应用于同一年度逐年获得的同一场景的SAR图像。单频带,单偏振SAR图像被分为水,城市和植被区域,使用这种方法,通过与地面真理数据进行比较,在85.92%-93.70%的范围内获得整体分类精度。

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