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Classification-based multimodality fusion approach for similarity ranking

机译:基于分类的多模态相似度融合方法

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The need for similarity rankings is common to a wide diversity of Pattern Recognition problems. When multiple modalities are available, effective combination methods that exploit the information contained in the different representations are required. In this paper, a method for effectively combining the information in the different modalities is presented. The method adopts the common framework used in metric learning and assumes that training samples are available, in the form of pairs of objects labeled as similar or dissimilar. For each pair, one or more distance measures are computed in each representation space, and these are used to train a soft classifier. Estimated class conditional probabilities are then used as scores for ranking purposes. The approach has been tested and compared to other existing combination methods in an image retrieval context, showing competitive results.
机译:对于各种各样的模式识别问题来说,相似性排名的需求是普遍的。当有多种方式可用时,就需要有效的组合方法来利用不同表示形式中包含的信息。本文提出了一种有效地组合不同形式信息的方法。该方法采用度量学习中使用的通用框架,并假设训练样本可用,以成对的标记为相似或不相似的对象对的形式出现。对于每一对,在每个表示空间中计算一个或多个距离度量,这些距离度量用于训练软分类器。然后,将估计的类别条件概率用作评分,以进行排名。该方法已经过测试,并在图像检索环境中与其他现有组合方法进行了比较,显示出具有竞争力的结果。

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