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Combinational Class Activation Maps for Weakly Supervised Object Localization

机译:用于弱监督对象本地化的组合类激活图

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Weakly supervised object localization has recently attracted attention since it aims to identify both class labels and locations of objects by using image-level labels. Most previous methods utilize the activation map corresponding to the highest activation source. Exploiting only one activation map of the highest probability class is often biased into limited regions or sometimes even highlights background regions. To resolve these limitations, we propose to use activation maps, named combinational class activation maps (CCAM), which are linear combinations of activation maps from the highest to the lowest probability class. By using CCAM for localization, we suppress background regions to help highlighting foreground objects more accurately. In addition, we design the network architecture to consider spatial relationships for localizing relevant object regions. Specifically, we integrate non-local modules into an existing base network at both low- and high-level layers. Our final model, named non-local combinational class activation maps (NL-CCAM), obtains superior performance compared to previous methods on representative object localization benchmarks including ILSVRC 2016 and CUB- 200-2011. Furthermore, we show that the proposed method has a great capability of generalization by visualizing other datasets.
机译:受监管不强的对象本地化最近吸引了关注,因为它旨在通过使用图像级标签来识别类标签和对象位置。先前的大多数方法都使用与最高激活源相对应的激活图。仅利用最高概率类别的一个激活图通常会偏向有限的区域,有时甚至会突出显示背景区域。为了解决这些限制,我们建议使用激活图,称为组合类激活图(CCAM),这是从最高到最低概率类的激活图的线性组合。通过使用CCAM进行本地化,我们抑制了背景区域,以帮助更准确地突出显示前景对象。另外,我们设计网络架构时要考虑空间关系以定位相关对象区域。具体来说,我们将非本地模块在低层和高层都集成到现有的基础网络中。我们的最终模型称为非本地组合类激活图(NL-CCAM),与以前在代表性对象本地化基准(包括ILSVRC 2016和CUB-200-2011)上的方法相比,其性能更高。此外,我们证明了该方法通过可视化其他数据集具有很大的概括能力。

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