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首页> 外文期刊>Expert systems with applications >Ensemble One-class Support Vector Machines For Content-based Image Retrieval
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Ensemble One-class Support Vector Machines For Content-based Image Retrieval

机译:集成一类支持向量机,用于基于内容的图像检索

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摘要

In order to narrow semantic gap between user query concept and low-level features in content-based image retrieval, SVM-based relevance feedback techniques are developed to learn user's query concept by labeling some samples. The major difficulty in relevance feedback is to estimate the support of target image in high-dimensional feature space with small number of training samples. To overcome this limitation, we propose an ensemble method to boost image retrieval accuracy and to improve its generalization performance. Images are segmented into multiple instances. A set of moderate accurate one-class support vector machine classifiers are trained separately by using different sub-features extracted from instances. The ensemble method results in a highly accurate by combining moderately accurate weak classifiers. Our propose ensemble scheme not only provides a robust mechanism in selecting strong query concept related images for relevant feedback, but also achieves a generalization performance in image retrieval.
机译:为了缩小基于内容的图像检索中用户查询概念和低级特征之间的语义鸿沟,开发了基于SVM的相关性反馈技术,通过标记一些样本来学习用户的查询概念。相关性反馈的主要困难是用少量训练样本来估计高维特征空间中目标图像的支持。为了克服这一限制,我们提出了一种集成方法来提高图像检索的准确性并提高其泛化性能。图像被分割成多个实例。一组中度准确的一类支持向量机分类器是通过使用从实例中提取的不同子功能来分别进行训练的。集成方法通过组合中等精度的弱分类器来实现高精度。我们提出的集成方案不仅为选择与查询概念相关的强查询图像提供了一种鲁棒的机制,以提供相关的反馈,而且在图像检索中实现了泛化性能。

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