InterLight:利用内在光照先验进行低光照图像增强 / InterLight: Leveraging Intrinsic Illumination Priors for Low-Light Image Enhancement
1️⃣ 一句话总结
本文提出了一种名为InterLight的框架,通过挖掘图像本身的光照特性(如传感器响应和场景亮度信息),设计了一种光照感知的增强流程,能更自然地改善低光照图像的清晰度和颜色,避免过度增强或失真。
Low-Light Image Enhancement (LLIE) has long been a challenging problem in low-level vision, as insufficient illumination often leads to low contrast, detail loss, and noise. Recent studies show that deep learning-based Retinex theory can effectively decouple illumination and reflectance. However, existing methods frequently suffer from over-enhancement or color distortion, and often assume uniform noise or ideal lighting. To address these limitations, we propose InterLight, a novel framework that systematically excavates and operationalizes intrinsic illumination priors for this http URL core insight is that robust enhancement requires not just estimating illumination, but constructing an illumination-aware pipeline. We first inject sensor-level illumination-response priors via physics-guided augmentation, then represent the degradation through adaptive prompts conditioned on the scene's latent illumination state. This explicit representation directly guides a luminance-gated intrinsic memory mechanism to selectively compensate for information loss, prioritizing reconstruction in dark regions while preserving fidelity in bright ones. Finally, the entire process is regularized by a self-supervised consistency objective that distills illumination-invariant features. By deeply exploiting intrinsic illumination priors, our method achieves clearer textures and more visually coherent enhancement results. Extensive experiments across multiple benchmarks demonstrate the effectiveness of our approach. Code is available at: this https URL.
InterLight:利用内在光照先验进行低光照图像增强 / InterLight: Leveraging Intrinsic Illumination Priors for Low-Light Image Enhancement
本文提出了一种名为InterLight的框架,通过挖掘图像本身的光照特性(如传感器响应和场景亮度信息),设计了一种光照感知的增强流程,能更自然地改善低光照图像的清晰度和颜色,避免过度增强或失真。
源自 arXiv: 2605.19982