Litcius/Paper detail

Face recognition based on curvelets, invariant moments features and SVM

Mohammed Talal Ghazal, Karam Abdullah

2020TELKOMNIKA (Telecommunication Computing Electronics and Control)30 citationsDOIOpen Access PDF

Abstract

Recent studies highlighted on face recognition methods. In this paper, a new algorithm is proposed for face recognition by combining Fast Discrete Curvelet Transform (FDCvT) and Invariant Moments with Support vector machine (SVM), which improves rate of face recognition in various situations. The reason of using this approach depends on two things. first, Curvelet transform which is a multi-resolution method, that can efficiently represent image edge discontinuities; Second, the Invariant Moments analysis which is a statistical method that meets with the translation, rotation and scale invariance in the image. Furthermore, SVM is employed to classify the face image based on the extracted features. This process is applied on each of ORL and Yale databases to evaluate the performance of the suggested method. Experimentally, the proposed method results show that our system can compose efficient and reasonable face recognition feature, and obtain useful recognition accuracy, which is able to face and side-face states detection of persons to decrease fault rate of production.

Topics & Concepts

CurveletArtificial intelligenceInvariant (physics)Pattern recognition (psychology)Computer scienceFacial recognition systemSupport vector machineFace (sociological concept)Classification of discontinuitiesComputer visionMathematicsWavelet transformSociologySocial scienceWaveletMathematical physicsMathematical analysisFace and Expression RecognitionImage Retrieval and Classification TechniquesImage and Video Stabilization