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An Input-Perceptual Reconstruction Adversarial Network for Paired Image-to-Image Conversion

Aamir Khan, Weidong Jin, Muqeet Ahmad, Rizwan Ali Naqvi, Desheng Wang

Year
2020
Citations
2
Access
Open access

Abstract

Image-to-image conversion based on deep learning techniques is a topic of interest in the fields of robotics and computer vision. A series of typical tasks, such as applying semantic labels to building photos, edges to photos, and raining to de-raining, can be seen as paired image-to-image conversion problems. In such problems, the image generation network learns from the information in the form of input images. The input images and the corresponding targeted images must share the same basic structure to perfectly generate target-oriented output images. However, the shared basic structure between paired images is not as ideal as assumed, which can significantly affect the output of the generating model. Therefore, we propose a novel Input-Perceptual and Reconstruction Adversarial Network (IP-RAN) as an all-purpose framework for imperfect paired image-to-image conversion problems. We demonstrate, through the experimental results, that our IP-RAN method significantly outperforms the current state-of-the-art techniques.

Keywords

Artificial intelligenceImage (mathematics)Computer scienceComputer visionImage editingImperfectPerceptionPattern recognition (psychology)

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