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Self-produced Guidance for Weakly-Supervised Object Localization

机译:自行制作的弱监督对象定位指导

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Weakly supervised methods usually generate localization results based on attention maps produced by classification networks. However, the attention maps exhibit the most discriminative parts of the object which are small and sparse. We propose to generate Self-produced Guidance (SPG) masks which separate the foreground i.e., the object of interest, from the background to provide the classification networks with spatial correlation information of pixels. A stagewise approach is proposed to incorporate high confident object regions to learn the SPG masks. The high confident regions within attention maps are utilized to progressively learn the SPG masks. The masks are then used as an auxiliary pixel-level supervision to facilitate the training of classification networks. Extensive experiments on ILSVRC demonstrate that SPG is effective in producing high-quality object localizations maps. Particularly, the proposed SPG achieves the Top-1 localization error rate of 43.83% on the ILSVRC validation set, which is a new state-of-the-art error rate.
机译:弱监督方法通常基于分类网络生成的注意力图来生成本地化结果。但是,注意图显示了对象的最具区分性的部分,该部分很小且稀疏。我们建议生成自产生的引导(SPG)蒙版,该蒙版将前景(即感兴趣的对象)与背景分开,以为分类网络提供像素的空间相关信息。提出了一种分阶段的方法,以结合高可信度的目标区域来学习SPG蒙版。注意图内的高置信度区域用于逐步学习SPG蒙版。然后,将这些掩模用作辅助像素级别的监督,以促进分类网络的训练。在ILSVRC上进行的大量实验表明,SPG可有效生成高质量的对象定位图。特别是,提出的SPG在ILSVRC验证集上实现了Top-1定位错误率43.83%,这是一个最新的最新错误率。

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