TY - JOUR
T1 - ClassiGAN: joint image reconstruction and classification in computational microwave imaging
AU - Zhang, Jiaming
AU - Alvarez Narciandi, Guillermo
AU - Garcia-Fernandez, Maria
AU - Sharma, Rahul
AU - Zhang, Jie
AU - del Hougne, Philipp
AU - Abbasi, Muhammad Ali Babar
AU - Yurduseven, Okan
PY - 2025/2/19
Y1 - 2025/2/19
N2 - Computational Imaging (CI)-based systems have emerged as a viable alternative to address the challenges ofhigh hardware complexity and slow data acquisition speed associated to conventional microwave imaging. However, CI based systems are limited by a substantial computational burden during the scene reconstruction process. In particular, image reconstruction and target classification problems for CI systems are computationally complex tasks. To tackle this challenge, a generative deep learning model named ClassiGAN is proposed to jointly solve the image reconstruction and target classification tasks by only using the back-scattered measured signals as input. In particular, an adaptive loss function is employed to effectively integrate the respective loss functions for the two tasks,thereby enhancing training efficiency. This adaptive loss function dynamically adjusts the weights of the losses associated with each task, facilitating a more effective integration of the differing loss functions. Notably, ClassiGAN significantly reduces the runtime for image reconstruction tasks compared to conventional CImethods. Compared to other state-of-the-art methods, ClassiGANnot only achieves lower average normalized mean squared error(NMSE) and higher structural similarity (SSIM) but also provides a higher accuracy in recognizing imaging targets. Extensive experimental tests further validate ClassiGAN’s capability to simultaneously reconstruct and recognize the imaging target within practical settings. Hence, this shows that ClassiGAN can enhance the overall efficiency of CI-based systems at microwave frequencies by addressing challenges related to computational load during runtime.
AB - Computational Imaging (CI)-based systems have emerged as a viable alternative to address the challenges ofhigh hardware complexity and slow data acquisition speed associated to conventional microwave imaging. However, CI based systems are limited by a substantial computational burden during the scene reconstruction process. In particular, image reconstruction and target classification problems for CI systems are computationally complex tasks. To tackle this challenge, a generative deep learning model named ClassiGAN is proposed to jointly solve the image reconstruction and target classification tasks by only using the back-scattered measured signals as input. In particular, an adaptive loss function is employed to effectively integrate the respective loss functions for the two tasks,thereby enhancing training efficiency. This adaptive loss function dynamically adjusts the weights of the losses associated with each task, facilitating a more effective integration of the differing loss functions. Notably, ClassiGAN significantly reduces the runtime for image reconstruction tasks compared to conventional CImethods. Compared to other state-of-the-art methods, ClassiGANnot only achieves lower average normalized mean squared error(NMSE) and higher structural similarity (SSIM) but also provides a higher accuracy in recognizing imaging targets. Extensive experimental tests further validate ClassiGAN’s capability to simultaneously reconstruct and recognize the imaging target within practical settings. Hence, this shows that ClassiGAN can enhance the overall efficiency of CI-based systems at microwave frequencies by addressing challenges related to computational load during runtime.
U2 - 10.1109/TRS.2025.3543722
DO - 10.1109/TRS.2025.3543722
M3 - Article
SN - 2832-7357
JO - IEEE Transactions on Radar Systems
JF - IEEE Transactions on Radar Systems
ER -