SEMI-SUPERVISED PolSAR IMAGE CLASSIFICATION BASED ON CROSSPSEUDO SUPERVISION AND HYBRID CONVOLUTIONAL NEURAL NETWORK

Fanfeng Shi and Fang Zheng

Keywords

Polarimetric SAR (PolSAR), image classification, semi-supervised learning, hybrid convolutional neural network (HCNN)

Abstract

In computer vision applications, convolutional neural networks (CNNs) have demonstrated significant effectiveness and achieved remarkable success, largely because of the abundance of well-labelled datasets. However, acquiring high-quality labels for polarimetric synthetic aperture radar (PolSAR) images is both time-consuming and expensive. Over the past few years, semi-supervised learning has gained attention as an effective approach to reduce dependency on labelled samples by utilising a combination of both labelled and unlabelled data. This paper proposes a novel semi-supervised method that utilises a hybrid CNN architecture with cross-pseudo supervision (CPS). This method transforms the PolSAR coherency matrix into two forms and trains two distinct CNN models to handle these different inputs,which addresses two critical challenges in semi- supervised PolSAR classification: (1) preserving phase coherence in complex-valued data to resolve ambiguities in terrains with overlapping magnitude responses and (2) mitigating pseudo-label noise propagation in label-scarce scenarios. This dual innovation enables robust classification in label-scarce PolSAR applications. Experimental results obtained from two different datasets validate the effectiveness of the suggested approach. The overall accuracies of two datasets are 99.19% and 96.01% with using 0.8% and 0.08% training samples per class.

Important Links:



Go Back