Abstract

This paper proposes a novel method of face recognition using de-correlation of local features using Discrete Cosine Transforms (DCT). The impulse for the proposed idea is with the fact that histograms DC constituent of local Gabor binary patterns constitute low frequency components which will sparsely help in actual recognition, because information in face resides in low frequency bands and is similar to all the images and also when these histograms are concatenated, it becomes difficult to differentiate and segregate actual frequency variations which add value for accurate recognition. A high correlation exists in between these histograms. This high correlation affects the recognition accuracy, hence de-correlation is achieved with the help of DCT application for individual histogram bins which aids in identification of actual frequency variations and highlights the changes in between two histograms thus improving the recognition accuracy. This method employs a non-statistical procedure which avoids training step for face samples thereby avoiding generalizability problem which is caused due to statistical learning procedure. The performance modeling is carried out by varying both internal and external factors of face recognition system and improvement is shown considerably high in terms of recognition accuracy and reduction in storage space by storing train images in compressed domain.

Highlights

  • INTRODUCTIONFace recognition is one of the most representative applications. In law enforcement and security applications, it has gained major importance

  • In image analysis, face recognition is one of the most representative applications

  • This paper shows that, if the same importance is given to image preprocessing steps such as cropping and illumination normalization, a better performance can be achieved for any given face recognition system

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Summary

INTRODUCTION

Face recognition is one of the most representative applications. In law enforcement and security applications, it has gained major importance. This paper proposes non-statistical method for face recognition which is robust to the variations of imaging condition and embeds much discriminating power It uses effective Gabor filtering of local features and forming histograms as the primary step. Suitable for extracting the orientation dependent frequency contents of patterns Gabor filters which are called as Gabor wavelets or kernels have been proven to be efficient tool for facial feature extraction and robust face detection and recognition They represent complex band-limited filters with an optimal localization in both the spatial and frequency domain. The following sub sections explain all the steps in detail

Preparation of input data using preprocessing steps
Application of DCT to local features
Face Variations in terms of appearance
Experimental dataset details
Performance modeling of face recognition
Conclusion

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