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Semisupervised Change Detection Using Graph Convolutional Network

Sudipan Saha, Lichao Mou, Xiao Xiang Zhu, Francesca Bovolo, Lorenzo Bruzzone

2020IEEE Geoscience and Remote Sensing Letters96 citationsDOI

Abstract

Most change detection (CD) methods are unsupervised as collecting substantial multitemporal training data is challenging. Unsupervised CD methods are driven by heuristics and lack the capability to learn from data. However, in many real-world applications, it is possible to collect a small amount of labeled data scattered across the analyzed scene. Such a few scattered labeled samples in the pool of unlabeled samples can be effectively handled by graph convolutional network (GCN) that has recently shown good performance in semisupervised single-date analysis, to improve change detection performance. Based on this, we propose a semisupervised CD method that encodes multitemporal images as a graph via multiscale parcel segmentation that effectively captures the spatial and spectral aspects of the multitemporal images. The graph is further processed through GCN to learn a multitemporal model. Information from the labeled parcels is propagated to the unlabeled ones over training iterations. By exploiting the homogeneity of the parcels, the model is used to infer the label at a pixel level. To show the effectiveness of the proposed method, we tested it on a multitemporal Very High spatial Resolution (VHR) data set acquired by Pleiades sensor over Trento, Italy.

Topics & Concepts

Computer scienceArtificial intelligenceChange detectionGraphPattern recognition (psychology)SegmentationHeuristicsImage segmentationLabeled dataPixelTheoretical computer scienceOperating systemRemote-Sensing Image ClassificationData-Driven Disease SurveillanceAdvanced Chemical Sensor Technologies
Semisupervised Change Detection Using Graph Convolutional Network | Litcius