A Convergent Solution to Tensor Subspace Learning.ppt
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1、A Convergent Solution to Tensor Subspace Learning,Concept,Tensor Subspace Learning . Concept,Tensor: multi-dimensional (or multi-way) arrays of components,Application,Tensor Subspace Learning . Application,real-world data are affected by multifarious factors,for the person identification, we may hav
2、e facial images of different, views and poses, lightening conditions, expressions,the observed data evolve differently along the variation of different factors, image columns and rows,Application,Tensor Subspace Learning . Application,it is desirable to dig through the intrinsic connections among di
3、fferent affection factors of the data.,Tensor provides a concise and effective representation.,Illumination,pose,expression,Image columns,Image rows,Images,Tensor Subspace Learning algorithms,Traditional Tensor Discriminant algorithms,Tensor Subspace Analysis,He et.al,Two-dimensional Linear Discrimi
4、nant Analysis,Discriminant Analysis with Tensor Representation,Ye et.al,Yan et.al,project the tensor along different dimensions or ways,projection matrices for different dimensions are derived iteratively,solve an trace ratio optimization problem,DO NOT CONVERGE !,Tensor Subspace Learning algorithms
5、,Graph Embedding a general framework,An undirected intrinsic graph G=X,W is constructed to represent the pairwise similarities over sample data.,A penalty graph or a scale normalization item is constructed to impose extra constraints on the transform.,intrinsic graph,penalty graph,Discriminant Analy
6、sis Objective,Solve the projection matrices iteratively: leave one projection matrix as variable while keeping others as constant.,No closed form solution,Mode-k unfolding of the tensor,Objective Deduction,Discriminant Analysis Objective,Trace Ratio: General Formulation for the objectives of the Dis
7、criminant Analysis based Algorithms.,DATER:,TSA:,Within Class Scatter of the unfolded data,Between Class Scatter of the unfolded data,Diagonal Matrix with weights,Constructed from Image Manifold,Disagreement between the Objective and the Optimization Process,Why do previous algorithms not converge?,
8、GEVD,The conversion from Trace Ratio to Ratio Trace induces an inconsistency among the objectives of different dimensions!,from Trace Ratio to Trace Difference,What will we do? from Trace Ratio to Trace Difference,Objective:,Define,Then,Trace Ratio,Trace Difference,Find,So that,from Trace Ratio to T
9、race Difference,What will we do? from Trace Ratio to Trace Difference,Constraint,Let,We have,Thus,The Objective rises monotonously!,Projection matrices of different dimensions share the same objective,Where,are the leading,eigen vectors of .,Main Algorithm Process,Main Algorithm,1: Initialization. I
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