Journal
PATTERN RECOGNITION
Volume 80, Issue -, Pages 109-117Publisher
ELSEVIER SCI LTD
DOI: 10.1016/j.patcog.2018.03.005
Keywords
Domain adaptation; Batch normalization; Neural networks
Funding
- National Natural Science Foundation of China [61772043]
- CCF-Tencent Open Research Fund
- NVIDIA Corporation
- GPU
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Deep neural networks (DNN) have shown unprecedented success in various computer vision applications such as image classification and object detection. However, it is still a common annoyance during the training phase, that one has to prepare at least thousands of labeled images to fine-tune a network to a specific domain. Recent study (Tommasi et al., 2015) shows that a DNN has strong dependency towards the training dataset, and the learned features cannot be easily transferred to a different but relevant task without fine-tuning. In this paper, we propose a simple yet powerful remedy, called Adaptive Batch Normalization (AdaBN) to increase the generalization ability of a DNN. By modulating the statistics from the source domain to the target domain in all Batch Normalization layers across the network, our approach achieves deep adaptation effect for domain adaptation tasks. In contrary to other deep learning domain adaptation methods, our method does not require additional components, and is parameter-free. It archives state-of-the-art performance despite its surprising simplicity. Furthermore, we demonstrate that our method is complementary with other existing methods. Combining AdaBN with existing domain adaptation treatments may further improve model performance. (C) 2018 Elsevier Ltd. All rights reserved.
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