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Hybrid Machine Learning Model for Face Recognition Using SVM 被引量:2
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作者 Anil Kumar Yadav R.K.Pateriya +3 位作者 Nirmal Kumar Gupta Punit Gupta Dinesh Kumar Saini Mohammad Alahmadi 《Computers, Materials & Continua》 SCIE EI 2022年第8期2697-2712,共16页
Face recognition systems have enhanced human-computer interactions in the last ten years.However,the literature reveals that current techniques used for identifying or verifying faces are not immune to limitations.Pri... Face recognition systems have enhanced human-computer interactions in the last ten years.However,the literature reveals that current techniques used for identifying or verifying faces are not immune to limitations.Principal Component Analysis-Support Vector Machine(PCA-SVM)and Principal Component Analysis-Artificial Neural Network(PCA-ANN)are among the relatively recent and powerful face analysis techniques.Compared to PCA-ANN,PCA-SVM has demonstrated generalization capabilities in many tasks,including the ability to recognize objects with small or large data samples.Apart from requiring a minimal number of parameters in face detection,PCA-SVM minimizes generalization errors and avoids overfitting problems better than PCA-ANN.PCA-SVM,however,is ineffective and inefficient in detecting human faces in cases in which there is poor lighting,long hair,or items covering the subject’s face.This study proposes a novel PCASVM-based model to overcome the recognition problem of PCA-ANN and enhance face detection.The experimental results indicate that the proposed model provides a better face recognition outcome than PCA-SVM. 展开更多
关键词 face recognition system(FRS) face identification SVM discrete cosine transform(DCT) artificial neural network(ANN) machine learning
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