Learning characteristic driving operations in curve sections that reflect drivers' skill levels.

Auteur(s)
Li, S. Yamabe, S. Sato, Y. Suda, Y. Chandrasiri, N.P. & Nawa, K.
Jaar
Samenvatting

The main objective of this study was to develop a new driving assistance system that could help less experienced drivers improve their driving skills. A statistical method is described that was developed to extract distinctions between experienced and less experienced drivers. This paper makes three key contributions. The first involves a technology for feature extraction based on AdaBoost, which selects a small number of features critical for operation between experienced and less experienced drivers. The second involves a simple definition for experienced and less experienced drivers. The third involves the introduction of wavelet transforms that were used to analyze the frequency characteristics of driver operations. A series of experiments was performed using a driving simulator on a specially designed course that included several curves and then used the proposed method to extract features of driving operations that demonstrated the differences between the two groups. (Author/publisher)

Publicatie

Bibliotheeknummer
20160272 ST [electronic version only]
Uitgave

International Journal of Intelligent Transportation Systems Research, Vol. 12 (2014), No. 3 (September), p. 135-145, 16 ref.

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