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                  Multiple Connected Residual Network for Image Enhancement on Smartphones

                  Jie Liu and Cheolkon Jung

                  Xidian University

                  Fig. 1 Left: Input original image from iPhone 3GS. Right: Enhanced image by the proposed method.

                  Abstract

                  Image enhancement on smartphones needs rapid processing speed with comparable performance. Recently, convolutional neural networks (CNNs) have achieved presentable performance in image processing tasks such as image super-resolution and enhancement. In this paper, we propose a lightweight generator for image enhancement based on CNN to keep a balance between quality and speed, called multi-connected residual network (MCRN). The proposed network consists of one discriminator and one generator. The generator is a two-stage network: 1) The first stage extracts structural features; 2) the second stage focuses on enhancing perceptual visual quality. By utilizing the style of multiple connections, we achieve good performance in image enhancement while making our network converge fast. Experimental results demonstrate that the proposed method outperforms the state-of-the-art approaches in terms of the perceptual quality and runtime.

                  Paper

                  DOI:TBD

                  Citation:
                  Jie Liu and Cheolkon Jung, "Multiple Connected Residual Network for Image Enhancement on Smartphones," Proc. European Conference on Computer Vision Workshop - PIRM 2018, 2018.

                  Codes

                  https://github.com/JieLiu95/MCRN

                  Acknowledgement

                  This work was supported by the National Natural Science Foundation of China (No. 61271298) and the International S&T Cooperation Program of China (No. 2014DFG12780).

                  ?2015 Xidian Media Lab. All rights reserved.
                  Email: jushutaoxidian@163.com

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