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  4. Stop hiding behind windshield: A windshield image enhancer based on a two-way generative adversarial network
 
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Stop hiding behind windshield: A windshield image enhancer based on a two-way generative adversarial network

Journal
1st ACM International Conference on Multimedia in Asia, MMAsia 2019
ISBN
9781450368414
Date Issued
2019-12-15
Author(s)
Chang, Chi Rung
Lung, Kuan Yu
Chen, Yi Chung
Huang, Zhi Kai
Shuai, Hong Han
WEN-HUANG CHENG  
DOI
10.1145/3338533.3366559
URI
https://scholars.lib.ntu.edu.tw/handle/123456789/628648
URL
https://api.elsevier.com/content/abstract/scopus_id/85084162321
Abstract
Windshield images captured by surveillance cameras are usually difficult to be seen through due to severe image degradation such as reflection, motion blur, low light, haze, and noise. Such image degradation hinders the capability of identifying and tracking people. In this paper, we aim to address this challenging windshield images enhancement task by presenting a novel deep learning model based on a two-way generative adversarial network, called Two-way Individual Normalization Perceptual Adversarial Network, TWIN-PAN. TWIN-PAN is an unpaired learning network which does not require pairs of degraded and corresponding ground truth images for training. Also, unlike existing image restoration algorithms which only address one specific type of degradation at once, TWIN-PAN can restore the image from various types of degradation. To restore the content inside the extremely degraded windshield and ensure the semantic consistency of the image, we introduce cyclic perceptual loss to the network and combine it with cycle-consistency loss. Moreover, to generate better restoration images, we introduce individual instance normalization layers for the generators, which can help our generators better adapt to their own input distributions. Furthermore, we collect a large high-quality windshield image dataset (WIE-Dataset) to train our network and to validate the robustness of our method in restoring degraded windshield images. Experimental results on human detection, vehicle ReID and user study manifest that the proposed method is effective for windshield image restoration.
Subjects
Generative adversarial network | Individual instance normalization | Perceptual loss | Windshield image enhancement
Type
conference paper

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