Enabling Robust Distracted Driving Performance Across Datasets with CLIP

Cong Duan,Jiacai Liao, Ning Ding, Libo Cao

2023 2nd International Conference on Sensing, Measurement, Communication and Internet of Things Technologies (SMC-IoT)(2023)

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摘要
Distracted driving is a major cause of road accidents. Detecting driver distraction in real-time using convolutional neural networks can significantly improve driving safety. However, existing methods relying on behavior classification to identify distraction suffer from high unreliability, especially in cross-dataset validations. This paper explores the use of CLIP, a recent contrastive language-image pre-training model, in distracted driving detection. Our cross-dataset tests on SFD, AUCDDV1, and 100-Driver suggest that CLIP holds promise in addressing the collapse issue observed in classification-based approaches across diverse datasets.
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关键词
Distracted Driving Detection,CNN,CLIP,Cross-Dataset Validation,Classification Network
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