WILDCAT: Weakly Supervised Learning of Deep ConvNets for Image Classification, Pointwise Localization and Segmentation

Thibaut Durand, Taylor Mordan, Nicolas Thome, M. Cord
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引用次数: 300

Abstract

This paper introduces WILDCAT, a deep learning method which jointly aims at aligning image regions for gaining spatial invariance and learning strongly localized features. Our model is trained using only global image labels and is devoted to three main visual recognition tasks: image classification, weakly supervised object localization and semantic segmentation. WILDCAT extends state-of-the-art Convolutional Neural Networks at three main levels: the use of Fully Convolutional Networks for maintaining spatial resolution, the explicit design in the network of local features related to different class modalities, and a new way to pool these features to provide a global image prediction required for weakly supervised training. Extensive experiments show that our model significantly outperforms state-of-the-art methods.
用于图像分类、点定位和分割的深度卷积神经网络弱监督学习
本文介绍了一种将图像区域对齐以获得空间不变性和学习强局部特征相结合的深度学习方法WILDCAT。我们的模型仅使用全局图像标签进行训练,并致力于三个主要的视觉识别任务:图像分类、弱监督对象定位和语义分割。WILDCAT在三个主要层面上扩展了最先进的卷积神经网络:使用全卷积网络来维持空间分辨率,在网络中明确设计与不同类别模态相关的局部特征,以及一种新的方法来汇集这些特征,以提供弱监督训练所需的全局图像预测。大量实验表明,我们的模型明显优于最先进的方法。
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