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Unsupervised Change Detection From Heterogeneous Data Based on Image Translation | IEEE Journals & Magazine | IEEE Xplore

Unsupervised Change Detection From Heterogeneous Data Based on Image Translation


Abstract:

It is quite an important and challenging problem for change detection (CD) from heterogeneous remote sensing images. The images obtained from different sensors (i.e., syn...Show More

Abstract:

It is quite an important and challenging problem for change detection (CD) from heterogeneous remote sensing images. The images obtained from different sensors (i.e., synthetic aperture radar (SAR) & optical camera) characterize the distinct properties of objects. Thus, it is impossible to detect changes by direct comparison of heterogeneous images. In this article, a new unsupervised change detection (USCD) method is proposed based on image translation. The cycle-consistent adversarial networks (CycleGANs) are employed to learn the subimage to subimage mapping relation using the given pair (i.e., before and after the event) of heterogeneous images from which the changes will be detected. Then, we can translate one image (e.g., SAR) from its original feature space (e.g., SAR) to another space (e.g., optical). By doing this, the pair of images can be represented in a common feature space (e.g., optical). The pixels with close pattern values in the before-event image may have quite different values in the after-event image if the change happens on some ones. Thus, we can generate the difference map between the translated before-event image and the original after-event image. Then, the difference map is divided into changed and unchanged parts. However, these detection results are not very reliable. We will select some significantly changed and unchanged pixel pairs from the two parts with the clustering technique (i.e., K -means). These selected pixel pairs are used to learn a binary classifier, and the other pixel pairs will be classified by this classifier to obtain the final CD results. Experimental results on different real datasets demonstrate the effectiveness of the proposed USCD method compared with several other related methods.
Article Sequence Number: 4403413
Date of Publication: 27 July 2021

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I. Introduction

Change detection (CD) from remote sensing images is one of the most critical technologies in earth observation applications, such as environmental investigation [1], urban development studies [2], [3], land-use monitoring [4], [5], and damage assessment [6]. Generally, the detection aims to identify the changes that occurred on the earth’s surface by jointly analyzing two or more images over the same geographical scene at different times [7], [8]. Unsupervised change detection (USCD) techniques for highlighting changes are becoming increasingly important as various requirements increase without relying on manual processing and without providing ground truth [8], [9].

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