Yanpeng SunZhanyou ChangYong ZhaoZhengxu HuaSirui Li
At night, visual quality is reduced due to insufficient illumination so that it is difficult to conduct high-level visual tasks effectively. Existing image enhancement methods only focus on brightness improvement, however, improving image quality in low-light environments still remains a challenging task. In order to overcome the limitations of existing enhancement algorithms with insufficient enhancement, a progressive two-stage image enhancement network is proposed in this paper. The low-light image enhancement problem is innovatively divided into two stages. The first stage of the network extracts the multi-scale features of the image through an encoder and decoder structure. The second stage of the network refines the results after enhancement to further improve output brightness. Experimental results and data analysis show that our method can achieve state-of-the-art performance on synthetic and real data sets, with both subjective and objective capability superior to other approaches.
Hengshuai CuiJinjiang LiZhen HuaLinwei Fan
Jinjiang LiXiaomei FengZhen Hua
Shuying HuangHuiying DongYong YangWei Ying-zhiMingyang RenShuzhao Wang
Lingbo KongYankai FengShuxin YangXu Gao
Jianming ZhangJia JiangYiting YangXiangnan Shi