PIRM Challenge on Perceptual Image Enhancement on Smartphones: Report
/ Authors
Andrey D. Ignatov, R. Timofte, Thang Vu, T. Luu, T. Pham, C. Nguyen, Yongwoo Kim, Jae-Seok Choi, Munchurl Kim, Jie Huang
and 38 more authors
Jie Ran, Chen Xing, Xingguang Zhou, Peng Fei Zhu, Mingrui Geng, Yawei Li, E. Agustsson, Shuhang Gu, L. Gool, Etienne de Stoutz, Nikolay Kobyshev, Kehui Nie, Yan Zhao, Gen Li, T. Tong, Qinquan Gao, Hanwen Liu, Pablo Navarrete Michelini, Dan Zhu, Hu Fengshuo, Zheng Hui, Xiumei Wang, Lirui Deng, Rang Meng, Jinghui Qin, Yukai Shi, Wushao Wen, Liang Lin, Ruicheng Feng, Shixiang Wu, Chao Dong, Y. Qiao, Subeesh Vasu, T. Nimisha, Praveen Kandula, A. Rajagopalan, Jie Liu, Cheolkon Jung
/ 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.
Journal: ECCV Workshops