JSAI2022

Presentation information

Organized Session

Organized Session » OS-15

[3G3-OS-15a] 移動系列のデータマイニングと機械学習(1/2)

Thu. Jun 16, 2022 1:30 PM - 2:30 PM Room G (Room G)

オーガナイザ:藤井 慶輔(名古屋大学)[現地]、竹内 孝(京都大学)、沖 拓弥(東京工業大学)、西田 遼(東北大学)、田部井 靖生(理化学研究所)、前川 卓也(大阪大学)

1:30 PM - 1:50 PM

[3G3-OS-15a-02] Estimation of Cognitive Function from Driving Data

〇Ryusei Kimura1, Takahiro Tanaka2, Yuki Yoshihara2, Kazuhiro Fujikake3, Hitoshi Kanamori2, Shogo Okada1 (1. Japan Advanced Institute of Science and Technology, 2. Nagoya University, 3. Chukyo University)

Keywords:Automobile, Cognitive function, Driving assistance system, Multimodal

Traffic accidents by older drivers due to cognitive decline have become a serious problem. Driving assistance systems that support the driver by adapting individual cognitive functions can provide appropriate feedback and prevent traffic accidents. To realize such systems, we developed a regression model to estimate a driver's cognitive function from on-road driving data. First, we segment driving time-series data into two road types, namely, arterial road and intersections, to consider driving situations. Second, we segment data further into many sequences with various duration. Finally, statistics are calculated from each sequence and they are used as input features of machine learning models. Our method can capture various duration of important driving behaviors. The experimental results show that our model can predict scores of Trail Making Test B and Useful Field of View test with $r$ of 0.747 and 0.634, respectively. Additionally, we reveal important sensor and road types for estimation.

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