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多模态生物识别系统中使用多目标改进遗传算法进行特征选择。

Feature Selection Using Multi-Objective Modified Genetic Algorithm in Multimodal Biometric System.

机构信息

Department of ECE, United Institute of Technology, Coimbatore, Tamil Nadu, India.

Department of Biomedical Engineering, Velalar College of Engineering and Technology, Erode, Tamil Nadu, India.

出版信息

J Med Syst. 2019 Jun 1;43(7):214. doi: 10.1007/s10916-019-1351-0.

Abstract

Today the multimodal biometric system has become a major area of study that is identified with applications of a large size in a recognition system. The feature selection is probably found to be the best factor to be optimized and is an on-going challenge in the midst of the optimization problems in the human recognition system. The feature selection aspires to bring down the number of the features, remove all types of redundant data and noise which result in a very high rate of recognition. The step further effects on the human recognition system and its performance. The work further presents a newer biometric system of verification that was multimodal and based on three different features which are the face, the hand vein, and the ear. This has today emerged as an extensively researched topic which spans various disciplines like signal processing, pattern recognition, and also computer vision. The features have been extracted by making use of the Incremental Principal Component Analysis (IPCA). Further, the work presented another novel algorithm of feature selection which was based on the Multi-Objective Modified Genetic Algorithm (MOM-GA). The Genetic Algorithm (GA) had been modified by means of introducing a levy search as opposed to a process of mutation. The algorithm has also proved to be an effective method of computation in which the search space is found to be highly dimensional. A classifier that makes use of the K-Nearest Neighbour (KNN) for classifying all accurate features is used. There were some investigations that were carried out and these results proved that this MOM-GA feature selection algorithm had been found as that which can generate certain excellent results using a minimal set of chosen features.

摘要

如今,多模态生物识别系统已成为一个主要的研究领域,其应用涉及到大型识别系统。特征选择可能是最需要优化的因素,也是人类识别系统中优化问题的一个持续挑战。特征选择旨在减少特征的数量,去除所有类型的冗余数据和噪声,从而实现非常高的识别率。这一步对人类识别系统及其性能有进一步的影响。

这项工作进一步提出了一种新的基于三种不同特征(面部、手部静脉和耳朵)的多模态生物识别验证系统。这一系统目前已成为一个广泛研究的课题,涉及信号处理、模式识别和计算机视觉等多个学科。特征是利用增量主成分分析(IPCA)提取的。此外,这项工作还提出了另一种基于多目标改进遗传算法(MOM-GA)的特征选择新算法。遗传算法(GA)通过引入莱维搜索而不是突变过程进行了修改。该算法还被证明是一种有效的计算方法,其搜索空间具有高度的维度。该算法使用 K-最近邻(KNN)分类器对所有准确的特征进行分类。

进行了一些调查,结果证明,这种 MOM-GA 特征选择算法可以用最小的特征集生成某些优秀的结果。

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