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Unsupervised Change Detection in Remote sensing Image Based on Image Fusion in Nonsubsampled Shearlet Transform Domain and fuzzy k-means clustering

机译:基于非下采样Shearlet变换域图像融合和模糊k均值聚类的遥感图像无监督变化检测

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In order to improve the detection precision and shorten the detection time, a novel unsupervised change detection method based on image fusion in nonsubsampled shearlet transform(NSST)domain and fuzzy k-means clustering is proposed in this paper. Frost filter is used to reduce the noise of the experimental images. The proposed neighborhood ratio operator and the common log-ratio operator are used to obtain difference images. In order to utilize fully the complementary information of the neighborhood ratio and the ratio images to obtain a better difference image, a novel fusion strategy in NSST domain is proposed. Since there are still noise in the difference images, the image denoising method with adaptive Bayes threshold in the NSST domain is applied to the high frequency coefficients of the difference images to reduce the noise. And then the proposed fusion strategy is applied to the low frequency bands and the denoised high frequency bands for getting the fused difference image. The change detection map is obtained by clustering the fused difference images utilizing k-means algorithm into two disjoint classes: changed and unchanged. The experimental results clearly show that the proposed detection operator has better detection performance and shorter running time, compared with the other reported algorithms.
机译:为了提高检测精度,缩短检测时间,提出了一种基于非下采样Skletlet变换(NSST)域图像融合和模糊k-means聚类的无监督变化检测方法。弗罗斯特滤镜用于减少实验图像的噪声。提出的邻域比算子和公共对数比算子用于获得差分图像。为了充分利用邻域比率和比率图像的互补信息以获得更好的差分图像,提出了一种新的NSST域融合策略。由于差异图像中仍然存在噪声,因此将NSST域中具有自适应贝叶斯阈值的图像去噪方法应用于差异图像的高频系数以减少噪声。然后将所提出的融合策略应用于低频带和去噪高频带,以获得融合后的差分图像。通过使用k-means算法将融合的差异图像聚类为两个不相交的类别:变化和不变,获得变化检测图。实验结果清楚地表明,与其他已报道的算法相比,所提出的检测算子具有更好的检测性能和更短的运行时间。

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