The Sparse Classification approach for image based face recognition assumes that each test sample can be expressed as a linear combination of training samples of the correct class. We propose a video based face recognition approach based on the same assumption. Our formulation requires solving a low-rank row-sparse Multiple Measurement Vector (MMV) recovery problem. Such a row-sparse MMV matrix is low rank as well. Since low rank row sparse MMV recovery is not a well-studied problem, we propose a novel algorithm to solve such it. The experimental evaluation is carried on the VidTIMIT database. The proposed method yields better results than state-of-the-art methods in video based frontal face recognition.
Angshul MajumdarPanos Nasiopoulos
Torre, Fernando De LaVallespi, CarlosRybski, PaulVeloso, ManuelaKanade, Takeo
Fernando De la TorreCarlos VallespiPaul E. RybskiManuela VelosoTakeo Kanade
Yuki KonoTomokazu TakahashiDaisuke DeguchiIchiro IdeHiroshi Murase