Abstract

Pattern Recognition comes naturally to humans and there are many pattern recognition tasks which humans can perform admirably well. However, human pattern recognition cannot compete with machine speed when the number of classes to be recognized becomes tremendously large. In this paper, we analyze the effectiveness of correlation filters for pattern classification problems. We have used Distance Classifier Correlation Filter (DCCF) for pattern classification of facial images. Two essential qualities of a correlation filter are distortion tolerance and discrimination ability. DCCF transposes the feature space in such a way that the images belonging to the same class gets closer and the images from different class moves far apart; thereby increasing the distortion tolerance and the discrimination ability. The results obtained demonstrate the effectiveness of the approach for face recognition applications.

Highlights

  • There are many daily pattern recognition tasks that come naturally to humans

  • Human pattern recognition suffers from three main drawbacks: poor speed, difficulty in scaling, and inability to handle some recognition tasks

  • Correlation filters have been widely used for several pattern recognition tasks and visual tracking of objects [11]

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Summary

INTRODUCTION

There are many daily pattern recognition tasks that come naturally to humans. Human pattern recognition suffers from three main drawbacks: poor speed, difficulty in scaling, and inability to handle some recognition tasks. Human pattern recognition has limitations when the number of classes to be recognized becomes large. The main goal of pattern recognition is to assign an observation maybe a signal, or an image or a high dimensional object into one of the multiple classes. An important class of pattern recognition applications is the use of biometric signatures like face image, fingerprint image, iris image etc. In this paper we analyze the possibility of using correlation filters for solving multiclass classification problems.

RELATED WORK
MULTICLASS PATTERN RECOGNITION OF FACIAL IMAGES
Formulation of DCCF Filter
Classification using the DCCF Filter:Method 1
Classification using the DCCF Filter:Method 2
Facial Recognition using DCCF
EXPERIMENTAL EVALUATION
Findings
CONCLUSION
Full Text
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