2022
DOI: 10.36227/techrxiv.19134854.v1
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Masked Token Enabled Pre-training: A Task-Agnostic Approach for Understanding Complex Traffic Flow

Abstract: <div><div><div><p>The conventional deep learning model performs well for traffic flow analysis by training with a large number of labeled data using a one-model-for-one-task approach, leading to huge computational complexity in dynamic intelligent transportation system (ITS) applications. To overcome this limitation, this paper propose a Token-based Self-Supervised Network (TSSN), which can learn TF features in a task-agnostic way, and provide a well bootstrapped pre-training model for … Show more

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