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Learning Globally Optimized Object Detector via Policy Gradient

机译:通过策略梯度学习全局优化的对象检测器

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In this paper, we propose a simple yet effective method to learn globally optimized detector for object detection, which is a simple modification to the standard cross-entropy gradient inspired by the REINFORCE algorithm. In our approach, the cross-entropy gradient is adaptively adjusted according to overall mean Average Precision (mAP) of the current state for each detection candidate, which leads to more effective gradient and global optimization of detection results, and brings no computational overhead. Benefiting from more precise gradients produced by the global optimization method, our framework significantly improves state-of-the-art object detectors. Furthermore, since our method is based on scores and bounding boxes without modification on the architecture of object detector, it can be easily applied to off-the-shelf modern object detection frameworks.
机译:在本文中,我们提出了一种简单而有效的方法来学习用于对象检测的全局优化检测器,这是对受REINFORCE算法启发的标准交叉熵梯度的简单修改。在我们的方法中,根据每个检测候选者当前状态的总体平均平均精度(mAP)自适应地调整交叉熵梯度,这将导致更有效的梯度和检测结果的全局优化,并且不会带来计算开销。得益于全局优化方法产生的更精确的梯度,我们的框架大大改善了最新的物体检测器。此外,由于我们的方法基于分数和边界框,而无需修改对象检测器的体系结构,因此可以轻松地应用于现成的现代对象检测框架。

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