文章摘要
HU Ruiguang(胡瑞光),HUANG Li.[J].高技术通讯(英文),2022,28(2):142~152
Non-identical residual learning for image enhancement via dynamic multi-level perceptual loss
  
DOI:10.3772/j.issn.1006-6748.2022.02.004
中文关键词: 
英文关键词: image enhancement, deep residual network, adversarial learning
基金项目:
Author NameAffiliation
HU Ruiguang(胡瑞光) (Beijing Aerospace Automatic Control Institute, Beijing 100854, P.R.China) 
HUANG Li (Beijing Aerospace Automatic Control Institute, Beijing 100854, P.R.China) 
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中文摘要:
      
英文摘要:
      Residual learning based deep generative networks have achieved promising performance in image enhancement. However, due to the large color gap between a low-quality image and its high-quality version, the identical mapping in conventional residual learning cannot explore the elaborate detail differences, resulting in color deviations and texture losses in enhanced images. To address this issue, an innovative non-identical residual learning architecture is proposed, which views image enhancement as two complementary branches, namely a holistic color adjustment branch and a fine-grained residual generation branch. In the holistic color adjustment, an adjusting map is calculated for each input low-quality image, in order to regulate the low-quality image to the high-quality representation in an overall way. In the fine-grained residual generation branch, a novel attention-aware recursive network is designed to generate residual images. This design can alleviate the overfitting problem by reusing parameters and promoting the network’s adaptability for different input conditions. In addition, a novel dynamic multi-level perceptual loss based on the error feedback ideology is proposed. Consequently, the proposed network can be dynamically optimized by the hybrid perceptual loss provided by a well-trained VGG, so as to improve the perceptual quality of enhanced images in a guided way. Extensive experiments conducted on publicly available datasets demonstrate the state-of-the-art performance of the proposed method.
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