Title :
Gaussian Mixture Model Mapping in face recognition
Author :
Xiang Zhou ; Xi Zhou ; Yanfei Liu
Author_Institution :
Automated Reasoning & Cognition Key Lab. of Chongqing, Chongqing Inst. of Green & Intell. Technol., Chongqing, China
Abstract :
It is difficult to appropriately measure the similarity between human faces under different settings, e.g. pose, illumination, expression and shield. In this paper, a new method called Gaussian Mixture Model Mapping (G3M) is proposed to solve the difficulties. The distribution of faces is divided into many Gaussian functions to cover different settings. A generic identity data set, in which each identity contains multiple images with large intra-personal variation, is adopted to construct the Gaussian mixture model. When considering two faces under significantly different settings, we can judge their feature space distribution by Gaussian mixture model and normalize them into standard space. And then, the normalized faces can be compared by feature in standard space. Finally, we use Multi-pie database to compute the spline functions and test this mode, and LFW is also considered. This method can substantially improve the performance in our test experiment.
Keywords :
Gaussian processes; face recognition; mixture models; pose estimation; splines (mathematics); G3M; Gaussian functions; Gaussian mixture model mapping; LFW; Multi-PIE database; expression feature space; face distribution; face normalization; face recognition; feature space distribution; generic identity data set; human face similarity measurement; illumination feature space; intrapersonal variation; performance improvement; pose feature space; shield feature space; spline functions; standard space; Face; Face recognition; Feature extraction; Gaussian mixture model; Lighting; Standards;
Conference_Titel :
Computational Problem-solving (ICCP), 2013 International Conference on
Conference_Location :
Jiuzhai
DOI :
10.1109/ICCPS.2013.6893566