Skip to content
2000

Tensor Singular Value Decomposition-Based Multiple View Spectral Segmentation

image of Tensor Singular Value Decomposition-Based Multiple View Spectral Segmentation
Preview this chapter:

This research presents a novel approach called "Multiple View Spectral Segmentation based on Tensor Singular Value Decomposition" for the segmentation of multi-view data. The algorithm utilizes three-rank tensors and constructs a probability transfer matrix for all view data. By exploiting the low-rank nature of tensors in the lateral, longitudinal, and vertical directions, the proposed procedure characterizes the tensor's low-rank properties in each dimension using a multi-rank approach based on tensor singular value decomposition (Tensor-SVD). Tensor-SVD decomposition, being based on tube convolution, enables the model to capture spatial correlations more effectively compared to other tensor resolution techniques and procedures based on two-dimensional structure relationships. Furthermore, the use of Fourier transformation allows for efficient calculations, thereby improving computational efficiency. Experimental results demonstrate that the proposed tensor resolution model based on Tensor-SVD achieves improved segmentation performance for multiple-view data.

/content/books/9789815305364.chapter-15
dcterms_subject,pub_keyword
-contentType:Journal -contentType:Figure -contentType:Table -contentType:SupplementaryData
10
5
Chapter
content/books/9789815305364
Book
false
en
Loading
This is a required field
Please enter a valid email address
Approval was a Success
Invalid data
An Error Occurred
Approval was partially successful, following selected items could not be processed due to error
Please enter a valid_number test