基于模式识别的矩阵对象相似性度量

Hyunsoek Choi, Hyeyoung Park
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引用次数: 1

摘要

为了使机器能够识别各种模式,重要的是定义一个适当的函数来测量不同对象之间的相似性。传统的相似性度量主要针对一维矢量数据,这可能导致二维矩阵数据的信息丢失。我们将两个矩阵之间的相似度计算作为一个神经网络问题,并设计了学习相似度度量的体系结构。我们在人脸识别和手势识别中提供了真实二维矩阵数据的实验,在这些实验中,我们证明了相似性度量的学习可以提高识别问题的性能。我们还比较了所提出的测量方法与传统的二维矩阵数据距离测量方法的性能。
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Measuring Similarity Between Matrix Objects for Pattern Recognition
In order to make machines able to recognize various patterns, it is important to define an appropriate function for measuring similarities between different objects. Conventional similarity measures are devised mainly for 1D vector data, which may lead to loss of information of 2D matrix data. We cast the calculation of similarity between two matrices as a neural network problem, and design the architecture for learning a similarity measure. We provide experiments on real 2D matrix data in the face recognition and gesture recognition, where we show that the learning of a similarity measure leads to improvements in the performance of the recognition problem. Also we compare the performance of the proposed measure with conventional distance measures for 2D matrix data.
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