首页> 外文会议>International Workshop on Multiple Classifier Systems(MCS 2007); 20070523-25; Prague(CZ) >Combining Pattern Recognition Modalities at the Sensor Level Via Kernel Fusion
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Combining Pattern Recognition Modalities at the Sensor Level Via Kernel Fusion

机译:通过内核融合在传感器级别组合模式识别模式

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The problem of multi-modal pattern recognition is considered under the assumption that the kernel-based approach is applicable within each particular modality. The Cartesian product of the linear spaces into which the respective kernels embed the output scales of single sensor is employed as an appropriate joint scale corresponding to the idea of combining modalities, actually, at the sensor level. From this point of view, the known kernel fusion techniques, including Relevance and Support Kernel Machines, offer a toolkit of combining pattern recognition modalities. We propose an SVM-based quasi-statistical approach to multi-modal pattern recognition which covers both of these modes of kernel fusion.
机译:在基于内核的方法适用于每个特定模态的假设下,考虑了多模态模式识别问题。相应内核将单个传感器的输出比例嵌入其中的线性空间的笛卡尔积被用作适当的联合比例,该比例实际上对应于在传感器级别组合模态的想法。从这个角度来看,已知的内核融合技术,包括相关性和支持内核机器,提供了一种组合模式识别方式的工具包。我们提出了一种基于SVM的准统计方法进行多模式模式识别,该方法涵盖了这两种内核融合模式。

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