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Weakly-Supervised Object Localization by Cutting Background with Deep Reinforcement Learning

机译:用深加固学习切割背景弱监督对象定位

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Weakly-supervised object localization only depends on image-level labels to obtain object locations and attracts more attention recently. Taking inspiration from the human visual mechanism that human searches and localizes the region of interest by shrinking the view from a wide range and ignoring the unrelated background gradually, we propose a novel weakly-supervised localization method of cutting background of an object iteratively to achieve object localization with deep reinforcement learning. This approach can train an agent as a detector, which searches through the image and tries to cut off all regions unrelated to classification performance. An effective refinement approach is also proposed, which generates a heat-map by sum-pooling all feature maps to refine the location cropped by the agent. As a result, by combining the top-down cutting process and the bottom-up evidence for refinement, we can achieve a good performance on object localization in only several steps. To the best of our knowledge, this may be the first attempt to apply deep reinforcement learning to weakly-supervised object localization. We perform our experiments on PASCAL VOC dataset and the results show our method is effective.
机译:弱监督的对象本地化仅取决于图像级标签以获得对象位置并最近吸引更多的关注。从人类搜索的人类视觉机制中获取灵感,通过逐渐缩小视图并逐渐忽略无关背景,提出了一种新颖的弱监督对象的弱监督本地化方法,迭代地实现物体深度加固学习本地化。这种方法可以将代理作为检测器训练,该检测器通过图像搜索并尝试切断与分类性能无关的所有区域。还提出了一种有效的细化方法,该方法通过SUM汇集所有特征映射来生成热映射,以优化代理裁剪的位置。因此,通过组合自上而下的切割过程和精制的自下而上的证据,我们只能在几个步骤中实现对象本地化的良好性能。据我们所知,这可能是第一次尝试应用深度加强学习,以弱监督对象本地化。我们在Pascal VOC数据集上执行我们的实验,结果表明我们的方法是有效的。

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