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URIE: Universal Image Enhancement for Visual Recognition in the Wild

About

Despite the great advances in visual recognition, it has been witnessed that recognition models trained on clean images of common datasets are not robust against distorted images in the real world. To tackle this issue, we present a Universal and Recognition-friendly Image Enhancement network, dubbed URIE, which is attached in front of existing recognition models and enhances distorted input to improve their performance without retraining them. URIE is universal in that it aims to handle various factors of image degradation and to be incorporated with any arbitrary recognition models. Also, it is recognition-friendly since it is optimized to improve the robustness of following recognition models, instead of perceptual quality of output image. Our experiments demonstrate that URIE can handle various and latent image distortions and improve the performance of existing models for five diverse recognition tasks when input images are degraded.

Taeyoung Son, Juwon Kang, Namyup Kim, Sunghyun Cho, Suha Kwak• 2020

Related benchmarks

TaskDatasetResultRank
Image ClassificationImageNet (test)
Top-1 Accuracy73.95
299
Image ClassificationCUB
Accuracy57.24
282
Semantic segmentationCityscapes v1 (test)
mIoU55.88
74
Perceptual Image RestorationAverage across datasets (combined)
PSNR18.81
35
SegmentationBDD-100k and LIS entire (test)
mIoU87.99
34
Semantic segmentationACDC v1 (test)
mIoU37.9
15
Semantic segmentationFoggyCityscapes v1 (test)
mIoU65.93
15
Perceptual Image RestorationNoise (unseen)
PSNR18.57
13
Perceptual Image RestorationRain100L (unseen)
PSNR20.97
13
Perceptual Image RestorationRESIDE (unseen)
PSNR20.37
13
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