4.7 Article

LAE-Net: A locally-adaptive emb e dding network for low-light image enhancement

Journal

PATTERN RECOGNITION
Volume 133, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.patcog.2022.109039

Keywords

Locally -adaptive; Image enhancement; Multi -distribution; Image entropy; Kernel selection

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In this paper, a Locally-Adaptive Embedding Network (LAE-Net) is proposed to achieve high-quality low-light image enhancement by addressing the balance issue in the low-light enhancement task. The proposed method utilizes locally-adaptive kernel selection and feature adaptation to handle the multi-distribution characteristics of frequency and illumination in natural scenes. Experimental results demonstrate the effectiveness of the approach.
In the low-light enhancement task, one of the major challenges lies in how to balance the image en-hancement properties of light intensity, detail presentation and color fidelity. In natural scenes, the multi -distribution of frequency and illumination characteristics in the spatial domain makes the balance more difficult. To solve this problem, we propose a Locally-Adaptive Embedding Network, namely LAE-Net, to realize high-quality low-light image enhancement with locally-adaptive kernel selection and feature adaptation for multi-distribution issues. Specifically, for the frequency multi-distribution, we rethink the spatial-frequency characteristic of human eyes, experimentally explore the relationship among the re-ceptive field size, the image spatial frequency and the light enhancement properties, and propose an Entropy-Inspired Kernel-Selection Convolution, where each neuron can adaptively adjust the receptive field size according to its spatial frequency characterized by information entropy. For the illumination multi-distribution, we propose an Illumination Attentive Transfer subnet, where the neurons can simul-taneously sense global consistency and local details, and accordingly hint where to focus the efforts on, thereby adjusting the refined features. Extensive experiments with ablation analysis show the effective-ness of our method and the proposed method outperforms many related state-of-the-art techniques on four benchmark datasets: MEF, LIME, NPE and DICM.(c) 2022 Elsevier Ltd. All rights reserved.

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