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Online feature selection based on generalized feature contrast model

机译:基于广义特征对比模型的在线特征选择

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To really bridge the gap between high-level semantics and low-level features in content-based image retrieval (CBIR), a problem that must be solved is which features are suitable for explaining the current query concept. We propose a novel feature selection (FS) criterion based on a psychological similarity measurement, generalized feature contrast model, and implement an online feature selection algorithm in a boosting manner to select the most representative features and do classification during each feedback round. The advantages of the proposed method are: it does not require a Gaussian assumption for "relevant" images as other online FS methods do; it accounts for the intrinsic asymmetry between "relevant" and "irrelevant" image sets in CBIR online learning; it is very fast. Extensive experiments have shown our algorithm's effectiveness.
机译:为了真正弥合基于内容的图像检索(CBIR)中高级语义和低级特征之间的鸿沟,必须解决的问题是哪些特征适合于解释当前的查询概念。我们提出一种基于心理相似性度量,广义特征对比模型的新颖特征选择(FS)准则,并以增强的方式实现在线特征选择算法,以选择最具代表性的特征并在每个反馈回合中进行分类。所提出的方法的优点是:它不需要像其他在线FS方法那样对“相关”图像进行高斯假设;它说明了CBIR在线学习中“相关”和“不相关”图像集之间的固有不对称性;这是非常快的。大量的实验证明了我们算法的有效性。

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