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SCL: Towards Accurate Domain Adaptive Object Detection via Gradient Detach Based Stacked Complementary Losses

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Unsupervised domain adaptive object detection aims to learn a robust detector in the domain shift circumstance, where the training (source) domain is label-rich with bounding box annotations, while the testing (target) domain is label-agnostic and the feature distributions between training and testing domains are dissimilar or even totally different. In this paper, we propose a gradient detach based stacked complementary losses (SCL) method that uses detection losses as the primary objective, and cuts in several auxiliary losses in different network stages accompanying with gradient detach training to learn more discriminative representations. We argue that the prior methods mainly leverage more loss functions for training but ignore the interaction of different losses and also the compatible training strategy (gradient detach updating in our work). Thus, our proposed method is a more syncretic adaptation learning process. We conduct comprehensive experiments on seven datasets, the results demonstrate that our method performs favorably better than the state-of-the-art methods by a significant margin. For instance, from Cityscapes to FoggyCityscapes, we achieve 37.9% mAP, outperforming the previous art Strong-Weak by 3.6%.

Zhiqiang Shen, Harsh Maheshwari, Weichen Yao, Marios Savvides• 2019

Related benchmarks

TaskDatasetResultRank
Object DetectionCityscapes to Foggy Cityscapes (test)
mAP37.9
196
Object DetectionWatercolor2k (test)
mAP (Overall)55.2
113
Object DetectionFoggy Cityscapes (test)
mAP (Mean Average Precision)37.9
108
Object DetectionSim10K → Cityscapes (test)
AP (Car)42.6
104
Object DetectionCityscapes Adaptation from SIM-10k (val)
AP (Car)42.6
97
Object DetectionClipart1k (test)
mAP41.5
70
Object DetectionPASCAL VOC to Water Color (test)
mAP55.2
64
Object DetectionKITTI → Cityscapes (test)--
62
Object DetectionPASCAL VOC to Clipart target domain
mAP41.5
61
Object DetectionCityscapes to Foggy Cityscapes (val)
mAP37.9
57
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