TL;DR
This paper presents a CNN-based method for inferring transportation modes from raw GPS trajectories, automatically extracting features and achieving high accuracy, surpassing traditional models.
Contribution
The study introduces a novel CNN input layout that captures motion features directly from raw GPS data, improving transportation mode classification accuracy.
Findings
Achieved 84.8% accuracy with CNN ensemble.
Outperformed traditional machine learning models.
Demonstrated the effectiveness of automatic feature extraction.
Abstract
Identifying the distribution of users' transportation modes is an essential part of travel demand analysis and transportation planning. With the advent of ubiquitous GPS-enabled devices (e.g., a smartphone), a cost-effective approach for inferring commuters' mobility mode(s) is to leverage their GPS trajectories. A majority of studies have proposed mode inference models based on hand-crafted features and traditional machine learning algorithms. However, manual features engender some major drawbacks including vulnerability to traffic and environmental conditions as well as possessing human's bias in creating efficient features. One way to overcome these issues is by utilizing Convolutional Neural Network (CNN) schemes that are capable of automatically driving high-level features from the raw input. Accordingly, in this paper, we take advantage of CNN architectures so as to predict travel…
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