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IAML: Illumination-Aware Mirror Loss for Progressive Learning in Low-Light Image Enhancement Auto-encoders

arXiv cs.CV / 3/17/2026

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Key Points

  • This paper proposes Illumination-Aware Mirror Loss (IAML), a novel loss function used in a teacher-student auto-encoder setup with progressive learning to distill multi-scale clean feature maps into the student decoder in a mirrored fashion.
  • IAML explicitly accounts for illumination variation, aligning student decoder features with clean teacher features while mitigating lighting effects.
  • The authors benchmark on three standard low-light image enhancement datasets and report state-of-the-art performance in average SSIM, PSNR, and LPIPS reconstruction metrics.
  • Ablation studies are conducted to isolate the impact of IAML on image reconstruction accuracy, demonstrating its contribution.

Abstract

This letter presents a novel training approach and loss function for learning low-light image enhancement auto-encoders. Our approach revolves around the use of a teacher-student auto-encoder setup coupled to a progressive learning approach where multi-scale information from clean image decoder feature maps is distilled into each layer of the student decoder in a mirrored fashion using a newly-proposed loss function termed Illumination-Aware Mirror Loss (IAML). IAML helps aligning the feature maps within the student decoder network with clean feature maps originating from the teacher side while taking into account the effect of lighting variations within the input images. Extensive benchmarking of our proposed approach on three popular low-light image enhancement datasets demonstrate that our model achieves state-of-the-art performance in terms of average SSIM, PSNR and LPIPS reconstruction accuracy metrics. Finally, ablation studies are performed to clearly demonstrate the effect of IAML on the image reconstruction accuracy.