A multi-to-one frontal view face synthesizing strategy, and how it could be utilized to improve traditional face recognition algorithms on pose variant problems, is introduced in this paper. The word multi-to-one means more than one input source images and one output synthetic image, and this is an information selection procedure. Through picking up the gray intensity most similar with that of frontal view face from multiple non-frontal input images, proposed algorithm tries to simulate real natural pose variance of human face. The similarity is evaluated according to the magnitude of non-rigid bending deformation involved during synthesizing, the underlying observation of which is, the more the bending deformation are utilized, the less na...