ADCC: An Effective and Intelligent Attention Dense Color Constancy System for Studying Images in Smart Cities
Yilang Zhang, Neal N. Xiong, Zheng Wei, Xin Yuan, Jian Wang

TL;DR
This paper introduces ADCC, a novel CNN-based color constancy method that leverages spatial information and log-histogram augmentation to improve illuminant estimation accuracy for smart city applications.
Contribution
The paper proposes a new attention-based DenseNet approach using log-chrominance histograms and image augmentation to enhance color constancy accuracy.
Findings
ADCC outperforms state-of-the-art methods on benchmark datasets.
The use of augmented images improves feature extraction and ambiguity elimination.
ADCC demonstrates high effectiveness for smart city vision applications.
Abstract
As a novel method eliminating chromatic aberration on objects, computational color constancy has becoming a fundamental prerequisite for many computer vision applications. Among algorithms performing this task, the learning-based ones have achieved great success in recent years. However, they fail to fully consider the spatial information of images, leaving plenty of room for improvement of the accuracy of illuminant estimation. In this paper, by exploiting the spatial information of images, we propose a color constancy algorithm called Attention Dense Color Constancy (ADCC) using convolutional neural network (CNN). Specifically, based on the 2D log-chrominance histograms of the input images as well as their specially augmented ones, ADCC estimates the illuminant with a self-attention DenseNet. The augmented images help to tell apart the edge gradients, edge pixels and non-edge ones in…
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Taxonomy
TopicsColor Science and Applications · Image Enhancement Techniques · Color perception and design
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Batch Normalization · Convolution · Average Pooling · Concatenated Skip Connection · Global Average Pooling · Dense Block · Kaiming Initialization · 1x1 Convolution · Dropout
