Title
Characterization and recognition of dynamic textures based on the 2D+T curvelet transform.
Abstract
The research context of this article is the recognition and description of dynamic textures. In image processing, the wavelet transform has been successfully used for characterizing static textures. To our best knowledge, only two works are using spatio-temporal multiscale decomposition based on the tensor product for dynamic texture recognition. One contribution of this article is to analyze and compare the ability of the 2D+T curvelet transform, a geometric multiscale decomposition, for characterizing dynamic textures in image sequences. Two approaches using the 2D+T curvelet transform are presented and compared using three new large databases. A second contribution is the construction of these three publicly available benchmarks of increasing complexity. Existing benchmarks are either too small not available or not always constructed using a reference database. Feature vectors used for recognition are described as well as their relevance, and performances of the different methods are discussed. Finally, future prospects are exposed.
Year
DOI
Venue
2015
10.1007/s11760-013-0532-4
Signal, Image and Video Processing
Keywords
Field
DocType
Dynamic textures, 2D+T curvelet transform, Spatio-temporal multiscale decompositions, Motion recognition, Video indexing
Tensor product,Computer vision,Feature vector,Pattern recognition,Curvelet transform,Computer science,Reference database,Image processing,Artificial intelligence,Texture recognition,Wavelet transform,Curvelet
Journal
Volume
Issue
ISSN
9
4
1863-1711
Citations 
PageRank 
References 
16
0.52
26
Authors
3
Name
Order
Citations
PageRank
Sloven DUBOIS1553.77
Renaud Péteri235219.38
Michel Ménard3383.47