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Tell Me Where to Look: Guided Attention Inference Network

机译:告诉我在哪里看:引导注意推理网络

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Weakly supervised learning with only coarse labels can obtain visual explanations of deep neural network such as attention maps by back-propagating gradients. These attention maps are then available as priors for tasks such as object localization and semantic segmentation. In one common framework we address three shortcomings of previous approaches in modeling such attention maps: We (1) make attention maps an explicit and natural component of the end-to-end training for the first time, (2) provide self-guidance directly on these maps by exploring supervision from the network itself to improve them, and (3) seamlessly bridge the gap between using weak and extra supervision if available. Despite its simplicity, experiments on the semantic segmentation task demonstrate the effectiveness of our methods. We clearly surpass the state-of-the-art on PASCAL VOC 2012 test and val. sets. Besides, the proposed framework provides a way not only explaining the focus of the learner but also feeding back with direct guidance towards specific tasks. Under mild assumptions our method can also be understood as a plug-in to existing weakly supervised learners to improve their generalization performance.
机译:只有粗标签的弱监督学习可以通过背部传播梯度获得深度神经网络的视觉解释,例如注意映射。然后可作为对象本地化和语义分割等任务的前沿可用这些注意映射。在一个常见的框架中,我们解决了在这些注意力地图上建模的先前方法的三个缺点:我们(1)首次注意到最终培训的明确和自然成分,(2)直接提供自我指导在这些地图上,通过探索网络本身的监督来改善它们,(3)如果可用,无缝地弥合使用弱和额外监督之间的差距。尽管其简单性,但语义分割任务的实验证明了我们方法的有效性。我们显然超越了帕斯卡VOC 2012年测试和Val的最先进。套。此外,拟议的框架不仅提供了解释学习者的焦点,而且提供了对特定任务的直接指导送回的方式。在温和的假设下,我们的方法也可以被理解为现有弱监督学习者的插件,以提高其泛化性能。

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