Abstract
As synthetic aperture radar (SAR) is playing an increasingly important role in Earth observations, many new methods and technologies have been proposed for change detection using multi-temporal SAR images. Especially with the development of deep learning, numerous methods have been proposed in recent years. However, the requirement to have a certain number of high-quality samples has become one of the main reasons for the limited development of these methods. Thus, in this paper, we propose an unsupervised SAR change detection method that is based on stochastic subspace ensemble learning. The proposed method consists of two stages: The first stage involves the automatic determination of high-confidence samples, which includes a fusion strategy and a refinement process; and the second stage entails using the stochastic subspace ensemble learning module, which contains three steps: obtaining the subsample sets, establishing and training a two-channel network, and applying the prediction results and an ensemble strategy. The subsample sets are used to solve the problem of imbalanced samples. The two-channel networks are used to extract high-dimensional features and learn the relationship between the neighborhood of the pixels in the original images and the labels. Finally, by using an ensemble strategy, the results predicted by all patches reclassified in each network are integrated as the detection result. The experimental results of different SAR datasets prove the effectiveness and the feasibility of the proposed method.
Highlights
Remote sensing images represent a precious source of information for earth observation applications, such as land use classification, [1,2] target recognition [3,4] and change detection [5,6], etc
The neighborhood ratio (NR) difference image (DI) and the log-mean ratio (LMR) DI generated by the original images are segmented separately by hierarchical fuzzy c-means clustering (FCM) (H-FCM) into the changed class, unchanged class, and intermediate class in both segmentation results
The result of the proposed method is compared with three other methods that are widely used, and some results based on the proposed network are presented from two aspects: visual and RemqouteaSnetnist.a2t0iv19e, 1a1n, 1a3l1y4ses
Summary
Remote sensing images represent a precious source of information for earth observation applications, such as land use classification, [1,2] target recognition [3,4] and change detection [5,6], etc. A big advantage of SAR change detection is that it can work independently of atmospheric and sunlight conditions. This capability is even crucial in some conditions [12]. Bad weather (e.g., rain and clouds) often coincides with some emergency events such as floods, landslides, and earthquakes [13]. In such circumstances, timely optical data may not be obtained and change detection from SAR image is the only method available for utilization
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