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A Novel Unsupervised Domain Adaption Method for Depth-Guided Semantic Segmentation Using Coarse-to-Fine Alignment
{Dinh Viet Sang Nguyen Thi-Oanh Muriel Visani Trinh Van Dieu Nguyen Minh Tu Kieu Dang Nam}
Abstract
Domain adaptation methods in machine learning deal with the domain shift issue by aligning source and target data representation. This paper proposes a novel domain adaptation method for semantic segmentation that exploits the Fourier transform on chromatic space to improve the quality of style transfer, and generates pseudo-labels for self-training by combining the results from different teachers obtained at different rounds of self-training. Our method also applies class-level adversarial learning to achieve a more fine-grained alignment between the two domains, and a late fusion with a depth-estimation model to improve its segmentation outputs. Experiments show that our method yields superior performance in terms of accuracy compared to other existing state-of-the-art methods.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| domain-adaptation-on-gta5-to-cityscapes | FAFS | mIoU: 58.8 |
| unsupervised-domain-adaptation-on-gtav-to | FAFS | mIoU: 58.8 |
| unsupervised-domain-adaptation-on-synthia-to | FAFS | mIoU: 54.5 mIoU (13 classes): 61.4 |
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