Litcius/Paper detail

Enhanced Millimeter-Wave 3-D Imaging via Complex-Valued Fully Convolutional Neural Network

Handan Jing, Shiyong Li, Ke Miao, Shuoguang Wang, Xiaoxi Cui, Guoqiang Zhao, Houjun Sun

2022Electronics18 citationsDOIOpen Access PDF

Abstract

To solve the problems of high computational complexity and unstable image quality inherent in the compressive sensing (CS) method, we propose a complex-valued fully convolutional neural network (CVFCNN)-based method for near-field enhanced millimeter-wave (MMW) three-dimensional (3-D) imaging. A generalized form of the complex parametric rectified linear unit (CPReLU) activation function with independent and learnable parameters is presented to improve the performance of CVFCNN. The CVFCNN structure is designed, and the formulas of the complex-valued back-propagation algorithm are derived in detail, in response to the lack of a machine learning library for a complex-valued neural network (CVNN). Compared with a real-valued fully convolutional neural network (RVFCNN), the proposed CVFCNN offers better performance while needing fewer parameters. In addition, it outperforms the CVFCNN that was used in radar imaging with different activation functions. Numerical simulations and experiments are provided to verify the efficacy of the proposed network, in comparison with state-of-the-art networks and the CS method for enhanced MMW imaging.

Topics & Concepts

Convolutional neural networkExtremely high frequencyComputer scienceArtificial neural networkParametric statisticsActivation functionComputational complexity theoryAlgorithmArtificial intelligenceDeep learningRadarMathematicsTelecommunicationsStatisticsMicrowave Imaging and Scattering AnalysisTerahertz technology and applicationsAntenna Design and Optimization