利用两种状态的离散HMM进行高速人脸识别

Hameed R. Farhan, Mahmuod H. Al-Muifraje, Thamir R. Saeed
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引用次数: 11

摘要

提出了一种基于离散隐马尔可夫模型(HMM)两种状态的简单快速人脸识别系统。状态数量的最小化导致高处理速度和更少的内存占用。中值滤波器应用于处理中的每张图像,它是用来消除噪声对图像影响的最合适的滤波器,从而提高系统的性能。利用最大方差和奇异值分解(SVD)相结合的方法从缩小尺寸的图像中提取特征。通过为每个特征向量分配单个值,可以进一步减少处理数据。这个过程大大加快了训练和分类步骤,其中在这项工作中使用了离散类型的从左到右HMM。实验结果表明,该方法优于现有的HMM人脸识别方法,实现了100%的识别率、高速度和极低的内存占用。
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Using only two states of discrete HMM for high-speed face recognition
This paper presents a simple and fast face recognition system based on two states of discrete Hidden Markov Model (HMM). The minimization in the number of states leads to high processing speed and less memory occupation. Median filter is applied to each image under process, where it is the most suitable filter used to eliminate the effect of noise on images, and thereby enhancing the performance of the system. The features are extracted from reduced size images using a combination of maximum variance and Singular Value Decomposition (SVD). More reduction in processing data is achieved by assigning a single value to each feature vector. This process greatly speeds up the training and classification steps, where a discrete type of left-to-right HMM is used in this work. Experimental results verify that the proposed work is superior to previous approaches of HMM face recognition, where it achieves 100% recognition rate, high speed, and extremely low memory usage.
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