Generalized N-dimensional principal component analysis (GND-PCA) based statistical appearance modeling of facial images with multiple modes

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Abstract

This paper introduces a framework called generalized N-dimensional principal component analysis (GND-PCA) for statistical appearance modeling of facial images with multiple modes including different people, different viewpoint and different illumination. The facial images with multiple modes can be considered as high-dimensional data. GND-PCA can represent the highorder dimensional data more efficiently. We conduct extensive experiments on MaVIC Database (KAO-Ritsumeikan Multi-angle View, Illumination and Cosmetic Facial Database) to evaluate the effectiveness of the proposed algorithm and compared the conventional ND-PCA in terms of reconstruction error. The results indicated that the extraction of data features is computationally more efficient using GND-PCA than PCA and ND-PCA. © 2009 Information Processing Society of Japan.

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Qiao, X., Xu, R., Chen, Y. W., Igarashi, T., Nakao, K., & Kashimoto, A. (2009). Generalized N-dimensional principal component analysis (GND-PCA) based statistical appearance modeling of facial images with multiple modes. In IPSJ Transactions on Computer Vision and Applications (Vol. 1, pp. 231–241). https://doi.org/10.2197/ipsjtcva.1.231

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