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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Learning realistic facial expressions from web images
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Learning realistic facial expressions from web images

机译:从网络图像中学习逼真的面部表情

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摘要

A large amount of labeled training data is required to develop effective and robust facial expression analysis methods. However, obtaining such data is typically a tedious and time-consuming task. With a rapid advance of the Internet and Web technologies, it has been feasible to collect a large number of images with label information at a low cost of human efforts. In this paper, we propose a search based framework to collect realistic facial expression images from the Web so as to further advance research on robust facial expression recognition. Due to the limitation of current commercial web search engines, a large fraction of returned images is not related to a given query keyword. We present a Support Vector Machine (SVM) based active learning approach for selecting relevant images from noisy image search results. The resulting dataset is more diverse with more sample images per expression compared to other well established facial expression datasets such as CK and JAFFE. In addition, a novel facial expression feature based on the state-of-the-art Weber Local Descriptor (WLD) and histogram contextualization is proposed to handle such a challenging dataset. Comprehensive experimental results demonstrate that our web based dataset is capable of resembling more closely to the real world conditions compared to the CK and JAFFE datasets, and our proposed feature is more effective than the existing widely used features.
机译:开发有效而可靠的面部表情分析方法需要大量的标记训练数据。但是,获取此类数据通常是一项繁琐且耗时的任务。随着Internet和Web技术的飞速发展,以人工成本低廉地收集带有标签信息的大量图像已成为可行。在本文中,我们提出了一个基于搜索的框架来从Web收集现实的面部表情图像,以进一步推进对鲁棒的面部表情识别的研究。由于当前的商业网络搜索引擎的局限性,大部分返回的图像与给定的查询关键字无关。我们提出一种基于支持向量机(SVM)的主动学习方法,用于从嘈杂的图像搜索结果中选择相关的图像。与其他成熟的面部表情数据集(例如CK和JAFFE)相比,生成的数据集更加多样化,每个表达式具有更多的样本图像。此外,提出了一种基于最新的Weber本地描述符(WLD)和直方图上下文化的新颖面部表情功能来处理这种具有挑战性的数据集。全面的实验结果表明,与CK和JAFFE数据集相比,我们基于Web的数据集能够更接近实际条件,并且我们提出的功能比现有的广泛使用的功能更有效。

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