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面向TDI CCD噪声建模的物理引导深度神经网络

夏波 黄鸿 周建勇 杨利平 王陶

光学精密工程2026,Vol.34Issue(3):466-480,15.
光学精密工程2026,Vol.34Issue(3):466-480,15.DOI:10.37188/OPE.20263403.0466

面向TDI CCD噪声建模的物理引导深度神经网络

Physics-guided deep neural network for TDI CCD noise modeling

夏波 1黄鸿 1周建勇 2杨利平 1王陶2

作者信息

  • 1. 重庆大学 光电技术与系统教育部重点实验室,重庆 400044
  • 2. 中国电子科技集团公司第四十四研究所,重庆 400060
  • 折叠

摘要

Abstract

Time-Delay Integration CCDs(TDI CCDs)are widely used in remote-sensing imaging.However,complex noise sources-including dark current,reset noise,and quantization noise-hinder accu-rate characterization of the signal-independent noise distribution of real sensors under low-light condi-tions.To address this challenge,a physics-guided deep neural network for TDI CCD noise modeling(PDNN)is proposed.Signal-independent noise is learned from dark-frame images and combined with signal-dependent noise modeled by a Poisson distribution,enabling accurate representation of the TDI CCD noise distribution in low-light scenes.First,a TDI CCD Noise Decoupling(TND)module de-composes dark-frame images into pixel-level noise with spatial independence.Next,a Gain and Multi-stage Adaptive(GMA)module,together with 1×1 convolutional layers in the TDI CCD Noise Model-ing(TNM)backbone,maps the initial noise into a distribution space that closely matches the true noise level while preserving pixel-wise independence.Finally,a Task Balanced Loss(TBL)dynamically ad-justs weighting factors to maintain training equilibrium,further improving performance.On a self-con-structed dataset,the proposed method achieves an average Kullback-Leibler divergence(AKLD)of 0.106 9,demonstrating substantial improvements over existing approaches.Moreover,PSNR and SSIM obtained from models trained with synthetic noisy images closely approximate those achieved with real data.Experimental results indicate that PDNN effectively characterizes the low-light noise distribu-tion of TDI CCDs,providing practical value for enhancing the visual quality of low-light remote-sensing imagery.

关键词

TDI CCD/物理引导/神经网络/噪声解耦/任务平衡损失

Key words

TDI CCD/physics-guided/neural network/noise decoupling/task balanced loss

分类

信息技术与安全科学

引用本文复制引用

夏波,黄鸿,周建勇,杨利平,王陶..面向TDI CCD噪声建模的物理引导深度神经网络[J].光学精密工程,2026,34(3):466-480,15.

基金项目

国家自然科学基金资助项目(No.42571416,No.42071302) (No.42571416,No.42071302)

北京市航空智能遥感装备工程技术研究中心开放基金资助项目(No.AIRSE202412) (No.AIRSE202412)

光学精密工程

1004-924X

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