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Covariance Features for Trajectory Analysis

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Date

2018

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Kaunas Univ Technology

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Yazılım Mühendisliği
Bölümümüzün içinde bulunduğumuz bilişim çağının en önemli unsuru olan yazılım sektörüne etkin katkıda bulunabilecek mühendisler yetiştirmeyi hedeflemektedir.

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Abstract

In this work, it is demonstrated that covariance estimator methods can be used for trajectory classification. It is shown that, features obtained via shrunk covariance estimation are suitable for describing trajectories. Compared to Dynamic Time Warping, application of explained technique is faster and yields more accurate results. An improvement of Dynamic Time Warping based on counting statistical comparison of base distance measures is also achieved. Results on Australian Sign Language and Character Trajectories datasets are reported. Experiment realizations imply feasibility through covariance attributes on time series.

Description

Maras, Hadi Hakan/0000-0001-5117-3938

Keywords

Covariance Matrices, Data Mining, Sign Language, Time Series Analysis

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WoS Q

Q4

Scopus Q

Q3

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Volume

24

Issue

3

Start Page

78

End Page

81