Abstract:Among the dimensionality reduction methods of 2D image, they often use L2 norm and L1 norm to construct the dimension reduction model, to a some extent, they realize the goal of dimension reduction. However, these methods only apply to the single norm, which is very limited. In this paper, we propose a new method, which uses Lp norm (1≤p≤2) instead of a single one. This method can construct a more generalized dimension reduction model and is suitable for all similar models. p=1 and p=2 can be regarded as a special case of this model. The proposed method is more flexible than a L1 or L2 norm and can adapt to different problems. In this paper, the objective function adopts the Lp norm of the twodimensional maximum margin criterion, and the intraclass discrete factor is defined to reduce the original data. The experiments on ORL and Yale and noise reduction databases show better robustness and efficiency.