Wei-Shan YangChun‐Wei TsaiKeng-Mao ChoChu‐Sing YangShou-Jen LinMing‐Chao Chiang
Most, if not all, of the researches in support vector machine (SVM) based face recognition algorithms have generally presumed that the classifier is static and thus unscalable, due to the fact that SVM is a supervised learning method. This paper introduces a novel SVM based face recognition method - by dynamically adding ¿new¿ faces of existing or new persons into the face database - which circumvents these difficulties. In other words, the proposed algorithm is able to learn and recognize faces that are not in the face database before. The paper presents the theory and the experimental results using the new approach. Our experimental results indicate that the accuracy rate of the proposed algorithm ranges from 91% up to 100% and outperforms all the others.
Nitin Kumar ChauhanPrashanth HarshangiKuruvachan K. George
Victor SineglazovAndriy Samoshin
Vishal ChauhanAsst ProfessorC MuY TuY FengR CharlsonS SchwartzJ HalesD CessJ CoakleyJ HansenJ FlemmingR SternR YamartinoA CohenN VanbilloenM HoylaertsP HoetA VerbruggenB NemeryA BundeS HavlinE Koscielny-BundeH SchellnhuberJ AntoineM FargeA GrinstedJ MooreS JevrejevaM RockingerE JondeauI DaubechiesA KumarU RawatP SinghA KumarA KumarU RawatG NasonB Silverman