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A comprehensive assessment system to optimize the overlap in DCT-HMM for face recognition

机译:全面的评估系统,可优化DCT-HMM中的重叠以进行人脸识别

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摘要

The Hidden Markov Model trained by Discrete Cosine Transform (DCT-HMM) is a very established method for face recognition. However, traditional ways to judge whether the model is a good model is usually one-sided. In Computation time or error rate, researchers usually consider one of the following: (1) to reduce the error rate or (2) to save the computation time. This paper proposes a novel assessment index based on entropy method by considering these two indexes together to evaluate the DCT-HMM system comprehensively. Also, since the block sampling part is important in the process of DCT-HMM, the overlap between consecutive blocks can be optimized by yielding the best assessment index value.
机译:由离散余弦变换(DCT-HMM)训练的隐马尔可夫模型是一种非常成熟的人脸识别方法。但是,传统的判断模型是否为好模型的方法通常是单方面的。在计算时间或错误率方面,研究人员通常考虑以下之一:(1)降低错误率或(2)节省计算时间。通过综合考虑这两个指标,提出了一种基于熵的评价指标体系,对DCT-HMM系统进行了综合评价。此外,由于块采样部分在DCT-HMM过程中很重要,因此可以通过产生最佳评估指标值来优化连续块之间的重叠。

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