Improved Prototype Selection in Synergetic Pattern Recognition to Recognize Human Face Expressions

The prototype selection plays critical roles in synergetic pattern recognition (SPR). K-means clustering is widely adopted to determine appropriate prototypes in SPR. However, the selection of initial cluster centers significantly affects clustering results. We propose an improved k-means clustering...

Full description

Bibliographic Details
Main Authors: Minchen Zhu, Weizhi Wang, Binghan Liu, Jingshan Huang
Format: Article
Language:English
Published: SAGE Publishing 2013-12-01
Series:Journal of Algorithms & Computational Technology
Online Access:https://doi.org/10.1260/1748-3018.7.4.541
id doaj-a3be9c27c1e44b83ba75bf7879bd7f51
record_format Article
spelling doaj-a3be9c27c1e44b83ba75bf7879bd7f512020-11-25T02:48:37ZengSAGE PublishingJournal of Algorithms & Computational Technology1748-30181748-30262013-12-01710.1260/1748-3018.7.4.541Improved Prototype Selection in Synergetic Pattern Recognition to Recognize Human Face ExpressionsMinchen Zhu0Weizhi Wang1Binghan Liu2Jingshan Huang3 College of Mathematics and Computer Science, Fuzhou University, Fuzhou, Fujian, 350108, China College of Civil Engineering, Fuzhou University, Fuzhou, Fujian, 350108, China College of Mathematics and Computer Science, Fuzhou University, Fuzhou, Fujian, 350108, China College of Mathematics and Computer Science, Fuzhou University, Fuzhou, Fujian, 350108, ChinaThe prototype selection plays critical roles in synergetic pattern recognition (SPR). K-means clustering is widely adopted to determine appropriate prototypes in SPR. However, the selection of initial cluster centers significantly affects clustering results. We propose an improved k-means clustering to handle this challenge. According to inner-class distances among samples within the same cluster, we will dynamically adjust inter-class distances among clusters. Initial cluster centers will then be highly representative in that they are distributed among as many samples as possible. Consequently, local optima that are common in k-means clustering can be effectively reduced. After we obtain final cluster centers output from the improved k-means clustering, we then use these centers as the prototype vector to train a synergetic neural network (SNN), which will be utilized to recognize human face expressions. Experimental results demonstrate that our algorithm greatly improves the accuracy in recognizing face expressions and, in a more efficient manner.https://doi.org/10.1260/1748-3018.7.4.541
collection DOAJ
language English
format Article
sources DOAJ
author Minchen Zhu
Weizhi Wang
Binghan Liu
Jingshan Huang
spellingShingle Minchen Zhu
Weizhi Wang
Binghan Liu
Jingshan Huang
Improved Prototype Selection in Synergetic Pattern Recognition to Recognize Human Face Expressions
Journal of Algorithms & Computational Technology
author_facet Minchen Zhu
Weizhi Wang
Binghan Liu
Jingshan Huang
author_sort Minchen Zhu
title Improved Prototype Selection in Synergetic Pattern Recognition to Recognize Human Face Expressions
title_short Improved Prototype Selection in Synergetic Pattern Recognition to Recognize Human Face Expressions
title_full Improved Prototype Selection in Synergetic Pattern Recognition to Recognize Human Face Expressions
title_fullStr Improved Prototype Selection in Synergetic Pattern Recognition to Recognize Human Face Expressions
title_full_unstemmed Improved Prototype Selection in Synergetic Pattern Recognition to Recognize Human Face Expressions
title_sort improved prototype selection in synergetic pattern recognition to recognize human face expressions
publisher SAGE Publishing
series Journal of Algorithms & Computational Technology
issn 1748-3018
1748-3026
publishDate 2013-12-01
description The prototype selection plays critical roles in synergetic pattern recognition (SPR). K-means clustering is widely adopted to determine appropriate prototypes in SPR. However, the selection of initial cluster centers significantly affects clustering results. We propose an improved k-means clustering to handle this challenge. According to inner-class distances among samples within the same cluster, we will dynamically adjust inter-class distances among clusters. Initial cluster centers will then be highly representative in that they are distributed among as many samples as possible. Consequently, local optima that are common in k-means clustering can be effectively reduced. After we obtain final cluster centers output from the improved k-means clustering, we then use these centers as the prototype vector to train a synergetic neural network (SNN), which will be utilized to recognize human face expressions. Experimental results demonstrate that our algorithm greatly improves the accuracy in recognizing face expressions and, in a more efficient manner.
url https://doi.org/10.1260/1748-3018.7.4.541
work_keys_str_mv AT minchenzhu improvedprototypeselectioninsynergeticpatternrecognitiontorecognizehumanfaceexpressions
AT weizhiwang improvedprototypeselectioninsynergeticpatternrecognitiontorecognizehumanfaceexpressions
AT binghanliu improvedprototypeselectioninsynergeticpatternrecognitiontorecognizehumanfaceexpressions
AT jingshanhuang improvedprototypeselectioninsynergeticpatternrecognitiontorecognizehumanfaceexpressions
_version_ 1724747436124012544