Machine Learning in Pattern Recognition

Chetanpal Singh
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引用次数: 2

Abstract

Supervised or unsupervised classification is the main objective of pattern recognition. The statistical approach is the most popular approach that is practised among the several frameworks where pattern recognition is initially formulated. In the recent past, the neural network technique and the methodology scheme from the statistical learning theory have garnered the attention of people. It requires proper attention to deal with the design of the recognition system. There are several issues associated with the design of the recognition system. They are the pattern class definition, sensing environment and representation extraction and selection of features, cluster analysis, classifier design, learning, and choosing the training and test samples. There is no solution to the general issue of recognizing complex patterns associated with arbitrary patterns. Data mining, web searching, and retrieval of multimedia are the various emerging applications that require proper and effective regulation techniques. The main purpose of this paper is to give a detailed overview of the various methods that can be used in the different stages of the pattern recognition system. The paper also aims to figure out the research topics in the application that can be highlighted in this challenging field.
模式识别中的机器学习
有监督或无监督分类是模式识别的主要目标。统计方法是在模式识别最初形成的几个框架中最流行的方法。近年来,基于统计学习理论的神经网络技术和方法方案受到了人们的关注。在处理识别系统的设计时需要适当的注意。有几个问题与识别系统的设计有关。它们是模式类的定义、感知环境和表征的提取和特征的选择、聚类分析、分类器的设计、学习以及训练和测试样本的选择。对于识别与任意模式相关的复杂模式的一般问题,没有解决方案。数据挖掘、网络搜索和多媒体检索是各种新兴应用,需要适当和有效的管理技术。本文的主要目的是详细概述在模式识别系统的不同阶段可以使用的各种方法。本文还旨在找出在这一具有挑战性的领域中可以突出的应用研究课题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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