Classification of Multidimensional Time-Evolving Data Using Histograms of Grassmannian Points

In this paper, we address the problem of classifying multidimensional time-evolving data in dynamic scenes. To take advantage of the correlation between the different channels of data, we introduce a generalized form of a stabilized higher order linear dynamical system (sh-LDS) and we represent the...

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Veröffentlicht in:IEEE transactions on circuits and systems for video technology 2018-04, Vol.28 (4), p.892-905
Hauptverfasser: Dimitropoulos, Kosmas, Barmpoutis, Panagiotis, Kitsikidis, Alexandros, Grammalidis, Nikos
Format: Artikel
Sprache:eng
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Zusammenfassung:In this paper, we address the problem of classifying multidimensional time-evolving data in dynamic scenes. To take advantage of the correlation between the different channels of data, we introduce a generalized form of a stabilized higher order linear dynamical system (sh-LDS) and we represent the multidimensional signal as a third-order tensor. In addition, we show that the parameters of the proposed model lie on a Grassmann manifold and we attempt to address the classification problem through study of the geometric properties of the sh-LDS's space. Moreover, to tackle the problem of nonlinearity of the observation data, we represent each multidimensional signal as a cloud of points on the Grassmann manifold and we create a codebook by identifying the most representative points. Finally, each multidimensional signal is classified by applying a bag-of-systems approach having first modeled the variation of the class of each codeword on its tangent space instead of the sh-LDS's space. The proposed methodology is evaluated in three different application domains, namely, video-based surveillance systems, dynamic texture categorization, and human action recognition, showing its great potential.
ISSN:1051-8215
1558-2205
DOI:10.1109/TCSVT.2016.2631719