Abstract :
To achieve video understanding, it is of utmost
practical importance to classify videos according to its spatial
and temporal features in an efficient and effective manner. It still
remains, however, largely an elusive task. In still-image analysis,
thanks to the great efforts made by many researchers, a broad
spectrum of methods have been developed with great success, especially
the ones based on eigen analysis due to its efficacy. In this
paper, inspired by the impressive performance achieved by this
framework, we will develop a content-based video classification
method based on three-dimensional (3-D) eigen analysis. Unlike
most other video understanding schemes where the spatial and
temporal contents play different roles in the processing, this new
method treats a video as a solid within a 3-D Euclidean space and
can, thus, naturally take advantage of the spatial and temporal
contents existing in videos. After computing the eigen values and
corresponding eigen vectors of the autocorrelation matrix for each
small 3-D macroblock, different labels are assigned regarding its
spatial/temporal natures based on the behavioral properties of
the eigen values and eigen vectors. Extensive empirical studies
have suggested encouraging performance for the use of this eigen
analysis-based video classification method.
Keywords :
Content-based classification , Differential geometry , eigen analysis , video understanding. , higher space embedding