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Reinforcement Learning for Visual Object Detection

机译:视觉对象检测的强化学习

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One of the most widely used strategies for visual object detection is based on exhaustive spatial hypothesis search. While methods like sliding windows have been successful and effective for many years, they are still brute-force, independent of the image content and the visual category being searched. In this paper we present principled sequential models that accumulate evidence collected at a small set of image locations in order to detect visual objects effectively. By formulating sequential search as reinforcement learning of the search policy (including the stopping condition), our fully trainable model can explicitly balance for each class, specifically, the conflicting goals of exploration - sampling more image regions for better accuracy -, and exploitation - stopping the search efficiently when sufficiently confident about the target's location. The methodology is general and applicable to any detector response function. We report encouraging results in the PASCAL VOC 2012 object detection test set showing that the proposed methodology achieves almost two orders of magnitude speed-up over sliding window methods.
机译:用于视觉对象检测的最广泛使用的策略之一是基于详尽的空间假设搜索。尽管诸如滑动窗口之类的方法已经成功且有效多年,但它们仍然是蛮力的,与图像内容和所搜索的视觉类别无关。在本文中,我们提出了有序的顺序模型,该模型可以累积在少量图像位置处收集的证据,以便有效地检测视觉对象。通过将顺序搜索表述为搜索策略(包括停止条件)的强化学习,我们完全可训练的模型可以针对每个类别明确地保持平衡,尤其是探索的冲突目标-采样更多图像区域以提高准确性-以及利用-停止在对目标位置足够有把握的情况下,可以高效地进行搜索。该方法是通用的,并且适用于任何检测器响应函数。我们在PASCAL VOC 2012对象检测测试集中报告了令人鼓舞的结果,表明所提出的方法比滑动窗口方法实现了近两个数量级的加速。

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