Adaptive Boosting for Domain Adaptation: Towards Robust Predictions in Scene Segmentation

29 Mar 2021  ·  Zhedong Zheng, Yi Yang ·

Domain adaptation is to transfer the shared knowledge learned from the source domain to a new environment, i.e., target domain. One common practice is to train the model on both labeled source-domain data and unlabeled target-domain data. Yet the learned models are usually biased due to the strong supervision of the source domain. Most researchers adopt the early-stopping strategy to prevent over-fitting, but when to stop training remains a challenging problem since the lack of the target-domain validation set. In this paper, we propose one efficient bootstrapping method, called Adaboost Student, explicitly learning complementary models during training and liberating users from empirical early stopping. Adaboost Student combines the deep model learning with the conventional training strategy, i.e., adaptive boosting, and enables interactions between learned models and the data sampler. We adopt one adaptive data sampler to progressively facilitate learning on hard samples and aggregate "weak" models to prevent over-fitting. Extensive experiments show that (1) Without the need to worry about the stopping time, AdaBoost Student provides one robust solution by efficient complementary model learning during training. (2) AdaBoost Student is orthogonal to most domain adaptation methods, which can be combined with existing approaches to further improve the state-of-the-art performance. We have achieved competitive results on three widely-used scene segmentation domain adaptation benchmarks.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Semi-Supervised Image Classification CIFAR-10, 4000 Labels Adaboost Percentage error 6.05±0.12 # 24
Unsupervised Domain Adaptation Cityscapes-to-OxfordCar Uncertainty + Adaboost mIoU 75.2 # 1
Unsupervised Domain Adaptation Cityscapes-to-OxfordCar MRNet + Adaboost mIoU 73.7 # 4
Domain Adaptation GTA5+Synscapes to Cityscapes MRNet + Adaboost mIoU 50.8 # 4
Domain Adaptation GTA5 to Cityscapes MRNet + Adaboost mIoU 49.0 # 24
Domain Adaptation GTAV+Synscapes to Cityscapes MRNet+Adaboost mIoU 50.8 # 5
Unsupervised Domain Adaptation GTAV-to-Cityscapes Labels Uncertainty + Adaboost mIoU 50.9 # 17
Synthetic-to-Real Translation GTAV-to-Cityscapes Labels Uncertainty + Adaboost mIoU 50.9 # 42
Unsupervised Domain Adaptation SYNTHIA-to-Cityscapes Uncertainty + Adaboost mIoU (13 classes) 57.5 # 15
mIoU 50.4 # 10
Synthetic-to-Real Translation SYNTHIA-to-Cityscapes Uncertainty + Adaboost (ResNet-101) MIoU (13 classes) 57.5 # 20
MIoU (16 classes) 50.4 # 19
Synthetic-to-Real Translation SYNTHIA-to-Cityscapes MRNet + Adaboost (ResNet-101) MIoU (13 classes) 52.9 # 28
MIoU (16 classes) 45.9 # 28
Unsupervised Domain Adaptation SYNTHIA-to-Cityscapes MRNet + Adaboost mIoU (13 classes) 52.9 # 17
mIoU 45.9 # 12

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