Complex-Valued Graph Neural Network on Space Target Classification for Defocused ISAR Images
Yun Zhang, Haoxuan Yuan, Hongbo Li, Chenxi Wei, Chengxin Yao
Abstract
Recently, researches on the classification for inverse synthetic aperture radar (ISAR) images continue to deepen. However, the maneuvering and attitude adjustment of space targets will bring high-order terms to received echoes which cause defocus on ISAR images and affect classification. The current classification models ignore the information of high-order terms containing in the relationship of real parts and imaginary parts of data. To this end, this letter proposes an end-to-end framework, called CV-GNN, specifically for the classification of defocused ISAR images under the few-shot condition. It models the features of real parts and imaginary parts of complex-valued (CV) images as graph information reasoning. Specifically, the deep relationship between them is mined to contribute to classification by complex-valued graph convolution. Moreover, the backpropagation process is derived in detail for updating the weights and bias of the network. The proposed method is then experimented with a mixed few-shot dataset of real and simulated data. Compared with the state-of-the-art methods, CV-GNN performs well in defocused image classification for each class of targets, and ablation studies verify the effectiveness of complex-valued network and graph neural network. The code and dataset will be available online (https://github.com/yhx-hit/cv_gnn).