Autores
Sina Dabiri, Chang-Tien Lu, Kevin Heaslip, Chandan K Reddy
Fecha de publicación
2019/2/1
Revista
IEEE Transactions on Knowledge and Data Engineering
Volumen
32
Número
5
Páginas
1010-1023
Editor
IEEE
Descripción
Identification of travelers’ transportation modes is a fundamental step for various problems that arise in the domain of transportation such as travel demand analysis, transport planning, and traffic management. In this paper, we aim to identify travelers’ transportation modes purely based on their GPS trajectories. First, a segmentation process is developed to partition a user's trip into GPS segments with only one transportation mode. A majority of studies have proposed mode inference models based on hand-crafted features, which might be vulnerable to traffic and environmental conditions. Furthermore, the classification task in almost all models have been performed in a supervised fashion while a large amount of unlabeled GPS trajectories has remained unused. Accordingly, we propose a deep SE mi-Supervised C onvolutional A utoencoder ( SECA ) architecture that can not only automatically extract relevant …
Citas totales
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