توجه: محتویات این صفحه به صورت خودکار پردازش شده و مقاله‌های نویسندگانی با تشابه اسمی، همگی در بخش یکسان نمایش داده می‌شوند.
۱Improving the performance of MPCA+MDA for Face Recognition
اطلاعات انتشار: نوزدهمین کنفرانس مهندسی برق ایران، سال
تعداد صفحات: ۵
A novel tensor based method is prepared to solve the supervised dimensionality reduction problem. In this paper a multilinear principal component analysis (MPCA) is utilized to reduce the tensor object dimension then a multilinear discriminant analysis (MDA), is applied to find the best subspaces. Because the number of possible subspace dimensions for any kind of tensor objects is extremely high, so testing all of them for finding the best one is not feasible. So this paper also presented a method to solve that problem, the main criterion of algorithm is similar to Sequential mode truncation (SMT) and full projection is used to initialize the iterative solution and find the best dimension for MDA. This paper is saving the extra times that we should spend to find the best dimension manually. So the execution time will be decreasing so much. It should be noted that both of the algorithms work with tensor objects with the same order so the structure of the objects has been never broken. Therefore the performance of this method is getting better. The advantage of these algorithms is avoiding the curse of dimensionality and having a better performance in the cases with small sample sizes. Finally, some experiments on CMPU–PIE databases are provided<\div>

۲Improving the performance of MDA by finding the best subspaces dimension based on LDA for face Recognition
اطلاعات انتشار: نوزدهمین کنفرانس مهندسی برق ایران، سال
تعداد صفحات: ۵
This paper is proposed a method to find the best dimension for Multilinear discriminant analysis (MDA). The main algorithm is the same as MDA. As we knew, MDA is using an iterative algorithm to maximize a tensor–based discriminant criterion. Because the number of possible subspace dimensions for any kind of tensor objects is extremely high, so testing all of them for finding the best one is not feasible. So this paper is presented a method to solve that problem. The main criterion of this algorithm is not similar to Sequential mode truncation (SMT) and full projection is used to initialize the iterative solution and find the best dimension for MDA. This paper is saving the extra times that we should spend to find the best dimension. So the execution time will be decreasing so much. It should be noted that MDA works with tensor objects so the structure of the objects has been never broken. Therefore the performance of this method is getting better. The advantage of this algorithm is avoiding the curse of dimensionality and having a better performance in the cases with small sample sizes. Finally, some experiments on ORL, FERET and CMU–PIE databases have been provided.<\div>
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