One of the most common problems of weakly supervised object localization is that of inaccurate object coverage. In the context of state-of-the-art methods based on Class Activation Mapping, this is caused either by localization maps which focus, exclusively, on the most discriminative region of the objects of interest or by activations occurring in background regions. To address these two problems, we propose two representation regularization mechanisms: Full Region Regularizationwhich tries to maximize the coverage of the localization map inside the object region, and Common Region Regularization which minimizes the activations occurring in background regions. We evaluate the two regularizations on the ImageNet, CUB-200-2011 and OpenImages-segmentation datasets, and show that the proposed regularizations tackle both problems, outperforming the state-of-the-art by a significant margin.
翻译:目标定位薄弱的最常见问题之一是目标覆盖不准确,在基于分类激活绘图的最新方法方面,这要么是由于完全侧重于目标最受歧视区域的本地化地图,要么是因为背景区域出现的激活。为了解决这两个问题,我们建议两个代表身份规范机制:全面区域规范,试图最大限度地扩大目标区域内本地化地图的覆盖,共同区域常规化,最大限度地减少背景区域的启动。我们评估了图像网络(CUB-200-2011)和Openimages分区数据集的两种正规化,并表明拟议的正规化解决了这两个问题,大大超越了最新技术。