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Unsupervised Domain Adaptation for Object Detection Using Distribution Matching in Various Feature Level

机译:使用各种功能级别的分布匹配进行对象检测的无监督域自适应

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摘要

As the research on deep learning has become more active, the need for a lot of data has emerged. However, there are limitations in acquiring real data such as digital forensics, so domain adaptation technology is required to overcome this problem. This paper considers distribution matching in various feature level for unsupervised domain adaptation for object detection with a single stage detector. The object detection task assumes that training and test data are drawn from the same distribution; however, in a real environment, there is a domain gap between training and test data which leads to degrading performance significantly. Therefore, we aim to learn a model to generalize well in target domain of object detection by using maximum mean discrepancy (MMD) in various feature levels. We adjust MMD based on single shot multibox detector (SSD) model which is a single stage detector that learns to localize objects with various size using a multi-layer design of bounding box regression and infers object class simultaneously. The MMD loss on high-level features between source and target domain effectively reduces the domain discrepancy to learn a domain-invariant feature in SSD model. We evaluate the approaches using Syn2real object detection dataset. Experimental results show that reducing the domain shift in high-level features improves the cross-domain robustness of object detection, and domain adaptation works better with simple MMD method than complex method as GAN.
机译:随着深度学习的研究变得越来越活跃,对大量数据的需求已经出现。但是,在获取诸如数字取证之类的真实数据时存在局限性,因此需要使用领域自适应技术来克服此问题。本文考虑了在单特征检测器的目标检测中无监督域自适应的各种特征级别的分布匹配。对象检测任务假定训练和测试数据来自同一分布;但是,在实际环境中,训练数据和测试数据之间存在领域差距,从而导致性能显着下降。因此,我们旨在通过在各个特征级别使用最大平均差异(MMD)学习一种能够在目标检测的目标域中很好地推广的模型。我们基于单发多盒检测器(SSD)模型调整MMD,SSD模型是一种单级检测器,它使用边界框回归的多层设计学习定位各种大小的对象,并同时推断对象类别。源域和目标域之间高级特征的MMD丢失有效地减少了域差异,从而学习了SSD模型中的域不变特征。我们使用Syn2real对象检测数据集评估方法。实验结果表明,减少高级特征中的域偏移可提高对象检测的跨域鲁棒性,并且与采用GAN的复杂方法相比,使用简单MMD方法的域自适应效果更好。

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