Self-DACE++:通过高效自适应曲线估计实现稳健的低光照增强 / Self-DACE++: Robust Low-Light Enhancement via Efficient Adaptive Curve Estimation
1️⃣ 一句话总结
本文提出了一种名为Self-DACE++的轻量级无监督低光照图像增强方法,通过改进的自适应曲线和去噪模块,在保持色彩和细节的同时大幅减少计算量,实现了比现有方法更优的增强效果和实时处理速度。
In this paper, we present Self-DACE++, an improved unsupervised and lightweight framework for Low-Light Image Enhancement (LLIE), building upon our previous Self-Reference Deep Adaptive Curve Estimation (Self-DACE). To better address the trade-off between computational efficiency and restoration quality, Self-DACE++ introduces enhanced Adaptive Adjustment Curves (AACs). These curves, governed by minimal trainable parameters, flexibly adjust the dynamic range while preserving the color fidelity, structural integrity, and naturalness of the enhanced images. To achieve an extremely lightweight architecture without sacrificing performance, we propose a randomized order training strategy coupled with a network fusion mechanism, which compresses the model into an efficient iterative inference structure. Furthermore, we formulate a physics-grounded objective function based on Retinex theory and incorporate a dedicated denoising module to effectively estimate and suppress latent noise in dark regions. Extensive qualitative and quantitative evaluations on multiple real-world benchmark datasets demonstrate that Self-DACE++ outperforms existing state-of-the-art methods, delivering superior enhancement quality with real-time inference capability. The code is available at this https URL.
Self-DACE++:通过高效自适应曲线估计实现稳健的低光照增强 / Self-DACE++: Robust Low-Light Enhancement via Efficient Adaptive Curve Estimation
本文提出了一种名为Self-DACE++的轻量级无监督低光照图像增强方法,通过改进的自适应曲线和去噪模块,在保持色彩和细节的同时大幅减少计算量,实现了比现有方法更优的增强效果和实时处理速度。
源自 arXiv: 2604.25367