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arxiv: 1701.01272 · v1 · pith:VNBVXEUEnew · submitted 2017-01-05 · 💻 cs.CV · cs.AI· cs.NE

Autoencoder Regularized Network For Driving Style Representation Learning

classification 💻 cs.CV cs.AIcs.NE
keywords drivinglearningdriverstylearnetautoencoderestimationgeneralized
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In this paper, we study learning generalized driving style representations from automobile GPS trip data. We propose a novel Autoencoder Regularized deep neural Network (ARNet) and a trip encoding framework trip2vec to learn drivers' driving styles directly from GPS records, by combining supervised and unsupervised feature learning in a unified architecture. Experiments on a challenging driver number estimation problem and the driver identification problem show that ARNet can learn a good generalized driving style representation: It significantly outperforms existing methods and alternative architectures by reaching the least estimation error on average (0.68, less than one driver) and the highest identification accuracy (by at least 3% improvement) compared with traditional supervised learning methods.

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