Author_Institution :
Coll. of Comput. Sci., Chongqing Univ., Chongqing, China
Abstract :
Human face contains abundant shape features. This fact motivates a lot of shape feature-based face detection and three-dimensional (3D) face recognition approaches. However, as far as we know, there is no prior low-level face representation which is purely based on shape feature proposed for conventional 2D (image-based) face recognition. In this study, the authors present a novel low-level shape-based face representation named `shape primitives histogram´ (SPH) for face recognition. In this approach, the face images are separated into a number of tiny shape fragments and they reduce these shape fragments to several uniform atomic shape patterns called `shape primitives´. Then the face representation is obtained by implementing a histogram statistic of shape primitives in a local image region. To take scale information into consideration, they also produce multi-scale SPHs (MSPHs) by concatenating the SPHs extracted from different scales. Moreover, they experimentally study the influences of each stage of SPH computation on performance, concluding that a small cell with 1/2 overlap and a fine size block with 1/2 overlap are important for good results. Four popular face databases, namely ORL, AR, YaleB and LFW-a, are employed to evaluate SPH and MSPH. Surprisingly, such seemingly naive shape-based face representations outperform the state-of-the-art low-level face representations.
Keywords :
face recognition; feature extraction; image representation; shape recognition; visual databases; AR; LFW; ORL; SPH; YaleB; atomic shape patterns; face databases; face detection; face images; face recognition; face representations; human face; image region; low-level face representation; shape feature; shape features; shape primitive histogram; tiny shape fragments;