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A+D Net: Training a Shadow Detector with Adversarial Shadow Attenuation

About

We propose a novel GAN-based framework for detecting shadows in images, in which a shadow detection network (D-Net) is trained together with a shadow attenuation network (A-Net) that generates adversarial training examples. The A-Net modifies the original training images constrained by a simplified physical shadow model and is focused on fooling the D-Net's shadow predictions. Hence, it is effectively augmenting the training data for D-Net with hard-to-predict cases. The D-Net is trained to predict shadows in both original images and generated images from the A-Net. Our experimental results show that the additional training data from A-Net significantly improves the shadow detection accuracy of D-Net. Our method outperforms the state-of-the-art methods on the most challenging shadow detection benchmark (SBU) and also obtains state-of-the-art results on a cross-dataset task, testing on UCF. Furthermore, the proposed method achieves accurate real-time shadow detection at 45 frames per second.

Hieu Le, Tomas F. Yago Vicente, Vu Nguyen, Minh Hoai, Dimitris Samaras• 2017

Related benchmarks

TaskDatasetResultRank
Shadow DetectionSBU (test)
Balanced Error Rate (BER)5.37
53
Shadow DetectionSBU
BER5.37
42
Shadow DetectionUCF (test)
BER9.25
35
Shadow DetectionSBU-Hard
BER (All)17.04
10
Shadow DetectionUCF-Hard
BER (All)18.31
10
Shadow DetectionSBU-Hard+UCF-Hard
BER (All)17.19
10
Shadow DetectionCUHK-Shadow (test)
F-beta (Overall)83.04
8
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