A Review of Pattern Recognition and Machine Learning

T. Adugna, A. Ramu, A. Haldorai
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引用次数: 0

Abstract

This article aims to provide a concise overview of diverse methodologies employed at different stages of a pattern recognition system, highlighting contemporary research challenges and applications in this dynamic field. The integration of machine learning techniques has played a pivotal role in converging pattern recognition frameworks in academic literature. The process relies heavily on supervised or unsupervised categorization methods to achieve its objectives, with a notable focus on statistical approaches. More recently, there is a growing emphasis on incorporating neural network methodologies and insights from statistical learning theory. Designing an effective recognition system necessitates careful consideration of various factors, including pattern representation, pattern class definition, feature extraction, sensing environment, feature selection, classifier learning and design, cluster analysis, test and training sample selection, and performance assessment.
模式识别与机器学习回顾
本文旨在简明扼要地概述模式识别系统不同阶段所采用的各种方法,重点介绍这一动态领域的当代研究挑战和应用。在学术文献中,机器学习技术的整合在融合模式识别框架方面发挥了关键作用。这一过程在很大程度上依赖于有监督或无监督的分类方法来实现其目标,而统计方法则是其中的重点。最近,人们越来越重视结合神经网络方法和统计学习理论的见解。设计一个有效的识别系统需要仔细考虑各种因素,包括模式表示、模式类别定义、特征提取、感知环境、特征选择、分类器学习和设计、聚类分析、测试和训练样本选择以及性能评估。
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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CiteScore
1.80
自引率
0.00%
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