首页> 外文会议>ISPRS Technical Commission VII Mid-term Symposium >A NEW UNSUPERVISED CHANGE DETECTION APPROACH BASED ON DWT IMAGE FUSION AND BACKTRACKING SEARCH OPTIMIZATION ALGORITHM FOR OPTICAL REMOTE SENSING DATA
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A NEW UNSUPERVISED CHANGE DETECTION APPROACH BASED ON DWT IMAGE FUSION AND BACKTRACKING SEARCH OPTIMIZATION ALGORITHM FOR OPTICAL REMOTE SENSING DATA

机译:一种基于DWT图像融合的新型无监督变化检测方法,回溯搜索优化算法进行光遥感数据

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摘要

Change detection is one of the most important subjects of remote sensing discipline. In this paper, a new unsupervised change detection approach is proposed for multi-temporal remotely sensed optic imagery. This approach does not require any prior information about changed and unchanged pixels. The approach is based on Discrete Wavelet Transform (DWT) based image fusion and Backtracking Search Optimization Algorithm (BSA). In the first step of the approach, absolute-valued difference image and absolute-valued log-ratio image is calculated from co-registered and radiometrically corrected multi-temporal images. Then, these difference images are fused using DWT. The fused image is filtered by median filter for edge information preservation and by wiener filter for image smoothing. Then, a min-max normalization is applied to the filtered data. The normalized data is clustered into two groups with BSA as changed and unchanged pixels by minimizing an objective function, unlike classical methods using CVA, PCA, FCM or K-means techniques. To show effectiveness of proposed approach, two remote sensing data sets, Sardinia and Mexico, are used. False Alarm, Missed Alarm, Total Alarm and Total Error Rate are selected as performance criteria to evaluate the effectiveness of new approach using ground truth images. Experimental results show that proposed approach is effective for unsupervised change detection of optical remote sensing data.
机译:变更检测是遥感纪律最重要的主题之一。本文提出了一种新的无监督变化检测方法,用于多时间远程感测光学图像。这种方法不需要任何关于改变和不变像素的先前信息。该方法基于离散小波变换(DWT)的图像融合和回溯搜索优化算法(BSA)。在该方法的第一步中,从共同登记和无线测量校正的多时间图像计算绝对值值差异图像和绝对值值的记录比图像。然后,使用DWT融合这些差异图像。通过中位滤波器进行融合图像,用于边缘信息保存以及用于图像平滑的维纳滤波器。然后,将MIN-MAX归一化应用于过滤的数据。由于使用CVA,PCA,FCM或K-MEAST技术,通过最小化目标函数将归一化数据簇聚集成两组,以BSA为改变和未改变的像素。为了表明所提出的方法的有效性,使用了两个遥感数据集,撒丁岛和墨西哥。假警报,错过警报,总报警和总错误率被选为绩效标准,以评估使用地面真理图像的新方法的有效性。实验结果表明,提出的方法对于无监督遥感数据的无监督变化检测是有效的。

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