Weakly-supervised object detection (WSOD) has emerged as an inspiring recent topic to avoid expensive instance-level object annotations. However, the bounding boxes of most existing WSOD methods are mainly determined by precomputed proposals, thereby being limited in precise object localization. In this paper, we defend the problem setting for improving localization performance by leveraging the bounding box regression knowledge from a well-annotated auxiliary dataset. First, we use the well-annotated auxiliary dataset to explore a series of learnable bounding box adjusters (LBBAs) in a multi-stage training manner, which is class-agnostic. Then, only LBBAs and a weakly-annotated dataset with non-overlapped classes are used for training LBBA-boosted WSOD. As such, our LBBAs are practically more convenient and economical to implement while avoiding the leakage of the auxiliary well-annotated dataset. In particular, we formulate learning bounding box adjusters as a bi-level optimization problem and suggest an EM-like multi-stage training algorithm. Then, a multi-stage scheme is further presented for LBBA-boosted WSOD. Additionally, a masking strategy is adopted to improve proposal classification. Experimental results verify the effectiveness of our method. Our method performs favorably against state-of-the-art WSOD methods and knowledge transfer model with similar problem setting. Code is publicly available at \url{https://github.com/DongSky/lbba_boosted_wsod}.
翻译:微弱监督的天体探测(WSOD)是最近一个令人鼓舞的专题,以避免昂贵的实验级对象说明。然而,大多数现有天体观察方法的捆绑框主要由预先配置的建议决定,从而限制精确的天体定位。在本文中,我们通过利用一个附加说明的辅助数据集的捆绑盒回归知识来维护提高本地化性能的问题设置。首先,我们使用附加说明的辅助数据集,以多阶段培训的方式探索一系列可学习的捆绑箱调整器(LBBAs),这是级的。然后,只有LBBAs和带有非过度设置的天体点定位课程的带弱附加说明的数据集,用于培训LBBA-加速的SODD。因此,我们的LBAA更方便、更经济地执行,同时避免附加附加说明的数据集的泄漏。特别是,我们以双级优化的方式将信箱调整器调整器设计成一个双级的自动调整器,并且建议一种类似于EM级的多级培训模型。然后,一个多级的模型化方法将用来校验制我们用于SWS-OWA的演示方法,用来改进我们的S-RODF-ro化方法。