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Zhen Zhao Yuhong Guo Haifeng Shen Jieping Ye

Abstract
In this paper, we propose a novel end-to-end unsupervised deep domain adaptation model for adaptive object detection by exploiting multi-label object recognition as a dual auxiliary task. The model exploits multi-label prediction to reveal the object category information in each image and then uses the prediction results to perform conditional adversarial global feature alignment, such that the multi-modal structure of image features can be tackled to bridge the domain divergence at the global feature level while preserving the discriminability of the features. Moreover, we introduce a prediction consistency regularization mechanism to assist object detection, which uses the multi-label prediction results as an auxiliary regularization information to ensure consistent object category discoveries between the object recognition task and the object detection task. Experiments are conducted on a few benchmark datasets and the results show the proposed model outperforms the state-of-the-art comparison methods.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| image-to-image-translation-on-cityscapes-to | MCAR | mAP: 38.8 |
| unsupervised-domain-adaptation-on-cityscapes-1 | MCAR | mAP@0.5: 38.8 |
| weakly-supervised-object-detection-on-1 | MCAR | MAP: 56.0 |
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