Out-of-Core Tensor Approximation of Multi-Dimensional Matrices of Visual Data

Hongcheng Wang, Qing Wu, Lin Shi, Yizhou Yu and Narendra Ahuja

   

Original

PCA Modifyied TensorTexture TensorTexture Our Method
Publications
 

1. Hongcheng Wang, Qing Wu, Lin Shi, Yizhou Yu and Narendra Ahuja, Out-of-Core Tensor Approximation of Multi-Dimensional Matrices of Visual Data, SIGGRAPH 2005, Los Angeles, August 2005 (ACM Transactions on Graphics, Vol. 24, No. 3, 2005).

Abstract: Tensor approximation is necessary to obtain compact multilinear models for multi-dimensional visual datasets. Traditionally, each multi-dimensional data item is represented as a vector. Such a scheme flattens the data and partially destroys the internal structures established throughout the multiple dimensions. In this paper, we retain the original dimensionality of the data items to more effectively exploit existing spatial redundancy and allow more efficient computation. Since the size of visual datasets can easily exceed the memory capacity of a single machine, we also present an outof- core algorithm for higher-order tensor approximation. The basic idea is to partition a tensor into smaller blocks and perform tensorrelated operations blockwise. We have successfully applied our techniques to three graphics-related data-driven models, including 6D bidirectional texture functions, 7D dynamic BTFs and 4D volume simulation sequences. Experimental results indicate that our techniques can not only process out-of-core data, but also achieve higher compression ratios and quality than previous methods.

Full Text:   PDF (~7MB)

Also see: Tensor Decomposition for Recognition

Demos

 

Download: Video (~65MB) (DivX 5.2 Compressed)

1, Bidirectional Texture Functions (BTFs) Compression and Modeling

2.  Dynamic Bidirectional Texture Functions (Dynamic  BTFs)

3. Physically Simulated Volume Sequence

 

  May 2005    Contact Me