Publication | Closed Access
Uncertainty-Aware Unsupervised Domain Adaptation in Object Detection
128
Citations
61
References
2021
Year
Few-shot LearningUnlabelled Target DomainImage AnalysisMachine VisionData ScienceMachine LearningPattern RecognitionObject DetectionObject RecognitionDomain AdaptationAdversarial Machine LearningEngineeringGenerative Adversarial NetworkComputer ScienceSource DomainConditional Adversarial LearningDeep LearningComputer Vision
Unsupervised domain adaptive object detection aims to adapt detectors from a labelled source domain to an unlabelled target domain. Most existing works take a two-stage strategy that first generates region proposals and then detects objects of interest, where adversarial learning is widely adopted to mitigate the inter-domain discrepancy in both stages. However, adversarial learning may impair the alignment of well-aligned samples as it merely aligns the global distributions across domains. To address this issue, we design an uncertainty-aware domain adaptation network (UaDAN) that introduces conditional adversarial learning to align well-aligned and poorly-aligned samples separately in different manners. Specifically, we design an uncertainty metric that assesses the alignment of each sample and adjusts the strength of adversarial learning for well-aligned and poorly-aligned samples adaptively. In addition, we exploit the uncertainty metric to achieve curriculum learning that first performs easier image-level alignment and then more difficult instance-level alignment progressively. Extensive experiments over four challenging domain adaptive object detection datasets show that UaDAN achieves superior performance as compared with state-of-the-art methods.
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