2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition 2018
DOI: 10.1109/cvpr.2018.00621
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Distort-and-Recover: Color Enhancement Using Deep Reinforcement Learning

Abstract: Learning-based color enhancement approaches typically learn to map from input images to retouched images. Most of existing methods require expensive pairs of input-retouched images or produce results in a noninterpretable way. In this paper, we present a deep reinforcement learning (DRL) based method for color enhancement to explicitly model the step-wise nature of human retouching process. We cast a color enhancement process as a Markov Decision Process where actions are defined as global color adjustment ope… Show more

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Cited by 193 publications
(154 citation statements)
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“…Initial work has already demonstrated the benefits of combining reinforcement learning with RNNs to play Atari ® games 145 . Promising results have also been obtained for visual tracking, 146,147 face recognition, 148 action recognition, 149,150 video captioning, 151 color enhancement, 152 and object detection 153,154 …”
Section: The Role Of Recurrence Beyond Recognitionmentioning
confidence: 99%
See 1 more Smart Citation
“…Initial work has already demonstrated the benefits of combining reinforcement learning with RNNs to play Atari ® games 145 . Promising results have also been obtained for visual tracking, 146,147 face recognition, 148 action recognition, 149,150 video captioning, 151 color enhancement, 152 and object detection 153,154 …”
Section: The Role Of Recurrence Beyond Recognitionmentioning
confidence: 99%
“…Initial work has already demonstrated the benefits of combining reinforcement learning with RNNs to play Atari R games. 145 Promising results have also been obtained for visual tracking, 146,147 face recognition, 148 action recognition, 149,150 video captioning, 151 color enhancement, 152 and object detection. 153,154 Another approach to learning structure in the visual world, which does not use explicit labeled examples or a teacher and provides direct rewards/punishment for specific actions, is based on the intuition that predicting what will happen next may be an important principle of computation in the brain.…”
Section: Learning and Plasticitymentioning
confidence: 99%
“…Using Photoshop, all the images were enhanced by a professional photographer for three different stylistic local effects: Foreground Pop-Out, Local Xpro, and Watercolor. Inspired by the prior work for global color enhancement [4], we decided the action set as shown in Table VII. We simply chose the same action set as [4] except for the "do nothing" action.…”
Section: ) Methodmentioning
confidence: 99%
“…Inspired by the prior work for global color enhancement [4], we decided the action set as shown in Table VII. We simply chose the same action set as [4] except for the "do nothing" action. The motivation for the choice has been discussed in the section 4.1 in their paper.…”
Section: ) Methodmentioning
confidence: 99%
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