Modern CNN-based object detectors assign anchors for ground-truth objects under the restriction of object-anchor Intersection-over-Unit (IoU). In this study, we propose a learning-to-match approach to break IoU restriction, allowing objects to match anchors in a flexible manner. Our approach, referred to as FreeAnchor, updates hand-crafted anchor assignment to "free" anchor matching by formulating detector training as a maximum likelihood estimation (MLE) procedure. FreeAnchor targets at learning features which best explain a class of objects in terms of both classification and localization. FreeAnchor is implemented by optimizing detection customized likelihood and can be fused with CNN-based detectors in a plug-and-play manner. Experiments on COCO demonstrate that FreeAnchor consistently outperforms their counterparts with significant margins.
翻译:以CNN为基础的现代物体探测器在物体锁定器交叉截断单位的限制下为地面真实物体指定锚。 在这项研究中,我们建议采用学习到匹配的方法来打破IOU限制,允许物体以灵活的方式匹配锚。我们的方法被称为FreeAnchor,更新手工制作的锁定定位,以“免费”锁定匹配,办法是制定探测器培训,作为最大可能性估计(MLE)程序。自由锁定器在学习功能上的目标,这些功能最能解释分类和本地化的一类物体。自由锁定器通过优化探测的定制可能性来实施,并且能够以插头和播放方式与CNN的探测器结合。COCO实验表明,自由锁定器始终比其对应方的距离要大。