PICA:基于点向实例和质心对齐的少镜头域自适应目标检测

Chaoliang Zhong, Jiexi Wang, Chengang Feng, Ying Zhang, Jun Sun, Yasuto Yokota
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引用次数: 6

摘要

在这项工作中,我们重点研究了在少量松散注释设置下的监督域自适应目标检测,其中源图像足够且完全标记,而目标图像是少量且松散注释。由于带注释的对象存在于目标域中,因此可以利用实例级对齐来提高性能。传统方法通过领域对抗训练对配对对象特征的分布进行语义对齐,从而实现实例级对齐。虽然已经证明,点向分布对齐的替代方法在跨域的少量分类任务中提供了更有效的解决方案,但这种点向对齐方法尚未扩展到目标检测中。在这项工作中,我们提出了一种将逐点对齐从分类扩展到目标检测的方法。此外,在少量松散标注设置下,目标域背景roi存在严重的标签噪声问题,可能导致逐点对齐失败。为此,我们利用移动平均质心来缓解背景roi的标记噪声问题。同时,我们利用实例和质心的逐点对齐来解决标记目标实例的稀缺性问题。因此,该方法不仅对背景roi的标签噪声具有鲁棒性,而且对标记目标的稀缺性具有鲁棒性。实验结果表明,所提出的实例级对齐方法与基线相比有显著的改进,优于现有的方法。
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PICA: Point-wise Instance and Centroid Alignment Based Few-shot Domain Adaptive Object Detection with Loose Annotations
In this work, we focus on supervised domain adaptation for object detection in few-shot loose annotation setting, where the source images are sufficient and fully labeled but the target images are few-shot and loosely annotated. As annotated objects exist in the target domain, instance level alignment can be utilized to improve the performance. Traditional methods conduct the instance level alignment by semantically aligning the distributions of paired object features with domain adversarial training. Although it is demonstrated that point-wise surrogates of distribution alignment provide a more effective solution in few-shot classification tasks across domains, this point-wise alignment approach has not yet been extended to object detection. In this work, we propose a method that extends the point-wise alignment from classification to object detection. Moreover, in the few-shot loose annotation setting, the background ROIs of target domain suffer from severe label noise problem, which may make the point-wise alignment fail. To this end, we exploit moving average centroids to mitigate the label noise problem of background ROIs. Meanwhile, we exploit point-wise alignment over instances and centroids to tackle the problem of scarcity of labeled target instances. Hence this method is not only robust against label noises of background ROIs but also robust against the scarcity of labeled target objects. Experimental results show that the proposed instance level alignment method brings significant improvement compared with the baseline and is superior to state-of-the-art methods.
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