擦除集成学习:一种简单而有效的弱监督对象定位方法

Jinjie Mai, Meng Yang, Wenfeng Luo
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引用次数: 88

摘要

弱监督对象定位(WSOL)的目的是在图像级标签等弱监督的情况下对对象进行定位。然而,基于分类网络的现有技术存在一个长期存在的问题,即它们往往会突出最具区别性的部分,而不是对象的整个范围。然而,试图探索目标的整体程度反而会降低图像分类的性能。为了解决这个问题,我们提出了一种简单而强大的方法,即引入一种新的对抗性擦除技术,即擦除集成学习(EIL)。本文提出的EIL通过将判别区域挖掘和对抗性擦除集成到vanilla CNN的单次前向向后传播中,同时探索高响应类特异性区域和低判别性区域,从而保持较高的分类性能,并共同发现目标的全面性。此外,我们在网络的不同层次上以顺序的方式应用了多个EIL (MEIL)模块,首次通过对抗性擦除学习集成了多层次、多尺度的语义特征。特别是,所提出的EIL和先进的EIL在CUB-200-2011和ILSVRC 2016基准测试中都达到了新的最先进的性能,在提升图像分类高性能的同时,在定位方面取得了显著的进步。
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Erasing Integrated Learning: A Simple Yet Effective Approach for Weakly Supervised Object Localization
Weakly supervised object localization (WSOL) aims to localize object with only weak supervision like image-level labels. However, a long-standing problem for available techniques based on the classification network is that they often result in highlighting the most discriminative parts rather than the entire extent of object. Nevertheless, trying to explore the integral extent of the object could degrade the performance of image classification on the contrary. To remedy this, we propose a simple yet powerful approach by introducing a novel adversarial erasing technique, erasing integrated learning (EIL). By integrating discriminative region mining and adversarial erasing in a single forward-backward propagation in a vanilla CNN, the proposed EIL explores the high response class-specific area and the less discriminative region simultaneously, thus could maintain high performance in classification and jointly discover the full extent of the object. Furthermore, we apply multiple EIL (MEIL) modules at different levels of the network in a sequential manner, which for the first time integrates semantic features of multiple levels and multiple scales through adversarial erasing learning. In particular, the proposed EIL and advanced MEIL both achieve a new state-of-the-art performance in CUB-200-2011 and ILSVRC 2016 benchmark, making significant improvement in localization while advancing high performance in image classification.
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