IA-CLAHE: Image-Adaptive Clip Limit Estimation for CLAHE

April 17, 2026 ยท Grace Period ยท ๐Ÿ› NTIRE 2026 Workshop at CVPR 2026

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Authors Rikuto Otsuka, Yuho Shoji, Yuka Ogino, Takahiro Toizumi, Atsushi Ito arXiv ID 2604.16010 Category cs.CV: Computer Vision Citations 0 Venue NTIRE 2026 Workshop at CVPR 2026
Abstract
This paper proposes image-adaptive contrast limited adaptive histogram equalization (IA-CLAHE). Conventional CLAHE is widely used to boost the performance of various computer vision tasks and to improve visual quality for human perception in practical industrial applications. CLAHE applies contrast limited histogram equalization to each local region to enhance local contrast. However, CLAHE often leads to over-enhancement, because the contrast-limiting parameter clip limit is fixed regardless of the histogram distribution of each local region. Our IA-CLAHE addresses this limitation by adaptively estimating tile-wise clip limits from the input image. To achieve this, we train a lightweight clip limits estimator with a differentiable extension of CLAHE, enabling end-to-end optimization. Unlike prior learning-based CLAHE methods, IA-CLAHE does not require pre-searched ground-truth clip limits or task-specific datasets, because it learns to map input image histograms toward a domain-invariant uniform distribution, enabling zero-shot generalization across diverse conditions. Experimental results show that IA-CLAHE consistently improves recognition performance, while simultaneously enhancing visual quality for human perception, without requiring any task-specific training data.
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