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Utilizing Context Information to Enhance Content-Based Image Classification

机译:利用上下文信息增强基于内容的图像分类

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摘要

Traditional image classification relies on text information such as tags, which requires a lot of human effort to annotate them. Therefore, recent work focuses more on training the classifiers directly on visual features extracted from image content. The performance of content-based classification is improving steadily, but it is still far below users 'expectation. Moreover, in a web environment, HTML surrounding texts associated with images naturally serve as context information and are complementary to content information. This paper proposes a novel two-stage image classification framework that aims to improve the performance of content-based image classification by utilizing context information of web-based images. A new TF*1DF weighting scheme is proposed to extract discriminant textual features from HTML surrounding texts. Both content-based and context-based classifiers are built by applying multiple correspondence analysis (MCA). Experiments on web-based images from Microsoft Research Asia (MSRA-MM) dataset show that the proposed framework achieves promising results.
机译:传统的图像分类依赖于诸如标签之类的文本信息,这需要大量的人工来对其进行注释。因此,最近的工作更多地集中在直接对从图像内容中提取的视觉特征进行分类器训练上。基于内容的分类的性能正在稳步提高,但仍远未达到用户的期望。而且,在网络环境中,与图像相关联的HTML周围的文本自然地用作上下文信息,并且与内容信息互补。本文提出了一种新颖的两阶段图像分类框架,旨在通过利用基于网络的图像的上下文信息来提高基于内容的图像分类的性能。提出了一种新的TF * 1DF加权方案,以从HTML周围的文本中提取出可区分的文本特征。基于内容的分类器和基于上下文的分类器都是通过应用多重对应分析(MCA)构建的。对来自Microsoft Research Asia(MSRA-MM)数据集的基于Web的图像进行的实验表明,该框架取得了可喜的成果。

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