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Learning Semantic Text Features for Web Text-Aided Image Classification

机译:学习语义文本特征以进行Web文本辅助图像分类

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The good generalization performance of conventional pattern classifiers often relies on the size of training data labeled by costly human labor. These days, publicly available web resources grow explosively, and this allows us to easily obtain abundant and cheap web data. Yet, web data are usually not as cooperative as human labeled data. In this paper, we explore the use of web text data to aid image classification. Without requiring the previous collection of auxiliary data from the web, we directly retrieve the web text information with the aid of the powerful reverse image search engine. We develop a novel textual modeling method named semantic matching neural network (SMNN) that is capable of learning semantic features from the associated text of web images. The SMNN text features have improved reliability and applicability, compared to the text features obtained from other methods. The SMNN text features and convolutional neural network (CNN) visual features are merged into a shared representation, which learns to capture the correlations between the two modalities. Experimental results on benchmark UIUC-Sports, Scene-15, Caltech-256, and Pascal VOC-2012 data sets show that the visual and text modalities of data from different sources are remarkably complementary and the fusion of them achieves substantial performance improvement.
机译:常规模式分类器的良好泛化性能通常取决于以昂贵的人工标记的训练数据的大小。如今,可公开获取的Web资源呈爆炸式增长,这使我们能够轻松获取大量廉价的Web数据。但是,Web数据通常不像人类标记的数据那样协作。在本文中,我们探索使用网络文本数据来辅助图像分类。不需要以前从网络上收集辅助数据,我们借助强大的反向图像搜索引擎直接检索网络文本信息。我们开发了一种名为语义匹配神经网络(SMNN)的新颖文本建模方法,该方法能够从Web图像的关联文本中学习语义特征。与从其他方法获得的文本特征相比,SMNN文本特征具有更高的可靠性和适用性。 SMNN文本特征和卷积神经网络(CNN)视觉特征被合并到一个共享表示中,该学习可以捕获两种模态之间的相关性。在基准UIUC-Sports,Scene-15,Caltech-256和Pascal VOC-2012数据集上的实验结果表明,来自不同来源的数据的视觉和文本模式显着互补,并且它们的融合实现了显着的性能改进。

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