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PIRM challenge on perceptual image enhancement on smartphones: Report
Date Issued
01-01-2019
Author(s)
Ignatov, Andrey
Timofte, Radu
Van Vu, Thang
Luu, Tung Minh
Pham, Trung X.
Van Nguyen, Cao
Kim, Yongwoo
Choi, Jae Seok
Kim, Munchurl
Huang, Jie
Ran, Jiewen
Xing, Chen
Zhou, Xingguang
Zhu, Pengfei
Geng, Mingrui
Li, Yawei
Agustsson, Eirikur
Gu, Shuhang
Van Gool, Luc
de Stoutz, Etienne
Kobyshev, Nikolay
Nie, Kehui
Zhao, Yan
Li, Gen
Tong, Tong
Gao, Qinquan
Hanwen, Liu
Michelini, Pablo Navarrete
Dan, Zhu
Fengshuo, Hu
Hui, Zheng
Wang, Xiumei
Deng, Lirui
Meng, Rang
Qin, Jinghui
Shi, Yukai
Wen, Wushao
Lin, Liang
Feng, Ruicheng
Wu, Shixiang
Dong, Chao
Qiao, Yu
Vasu, Subeesh
Thekke Madam, Nimisha
Kandula, Praveen
Indian Institute of Technology, Madras
Liu, Jie
Jung, Cheolkon
Abstract
This paper reviews the first challenge on efficient perceptual image enhancement with the focus on deploying deep learning models on smartphones. The challenge consisted of two tracks. In the first one, participants were solving the classical image super-resolution problem with a bicubic downscaling factor of 4. The second track was aimed at real-world photo enhancement, and the goal was to map low-quality photos from the iPhone 3GS device to the same photos captured with a DSLR camera. The target metric used in this challenge combined the runtime, PSNR scores and solutions’ perceptual results measured in the user study. To ensure the efficiency of the submitted models, we additionally measured their runtime and memory requirements on Android smartphones. The proposed solutions significantly improved baseline results defining the state-of-the-art for image enhancement on smartphones.
Volume
11133 LNCS