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CANet: An Unsupervised Deep Convolutional Neural Network for Efficient Cluster-Analysis-Based Multibaseline InSAR Phase Unwrapping

Lifan Zhou, Hanwen Yu, Yang Lan, Shengrong Gong, Mengdao Xing

2021IEEE Transactions on Geoscience and Remote Sensing49 citationsDOI

Abstract

Multibaseline (MB) phase unwrapping (PU) is a vital processing procedure for MB synthetic aperture radar interferometry (InSAR) signal processing and can improve the traditional InSAR by changing the ill-posed problem to the well-posed problem. The existing research has shown that the MB PU problem can be successfully converted into an unsupervised cluster analysis problem. Using the high feature descriptiveness of the deep learning technique, an unsupervised deep convolutional neural network, referred to as CANet, is proposed to cluster all the pixels into different groups according to the input’s recognizable pattern of the ambiguity number of the MB interferometric phase. Subsequently, we extend our previous two-stage programming-based MB processing approach (TSPA) to processing MB PU on a sparse irregular network, which is established from the clustering result of CANet. Both theoretical analysis and experimental results show that the proposed method is an effective MB PU method, and its execution time is drastically lower than those of many classical MB PU methods.

Topics & Concepts

Interferometric synthetic aperture radarComputer scienceConvolutional neural networkSynthetic aperture radarArtificial intelligencePhase unwrappingRemote sensingPattern recognition (psychology)InterferometryGeologyPhysicsAstronomySynthetic Aperture Radar (SAR) Applications and TechniquesAdvanced SAR Imaging TechniquesOptical measurement and interference techniques
CANet: An Unsupervised Deep Convolutional Neural Network for Efficient Cluster-Analysis-Based Multibaseline InSAR Phase Unwrapping | Litcius