Fast Array Ground Penetrating Radar Localization by CNN-based Optimization Method
IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing(2024)
Tongji Univ | Harbin Ind Univ | Osaka Univ | Inst Space Technol | Tohoku Univ
Abstract
This paper presents an optimization-based approach to overcome redundancy arising from the multi-variables enumeration process in Multiple Signal Classification (MUSIC). By incorporating BFGS optimization, the computational speed of the MUSIC algorithm is significantly improved while maintaining mathematical accuracy. The optimization techniques require reasonable initial values to start the iteration, while for single target imaging purposes, the initial values can be acquired by the boundary between the near field and the far field. To generate suitable initial values for the optimization, we employ a modified Convolutional Neural Network (CNN) to approximate the boundaries between the near and far fields, which vary with array system properties. Besides, the proposed method introduces a method for the Hessian Matrix and gradient initialization for the Broyden–Fletcher–Goldfarb–Shanno (BFGS) method. Using simulation results as training samples, the modified CNN successfully establishes boundary approximations. Simulation and experimentation confirm the feasibility of our proposed method, showing its advantages in both accuracy and computation speed compared to existing techniques.
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Key words
Multiple signal classification,Optimization,Training,Convolutional neural networks,Convolution,Surface treatment,Signal processing algorithms,Broyden-Fletcher-Goldfarb-Shanno (BGFS),convolutional neural network (CNN),multiple signal classification (MUSIC),quasi-Newton method
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