A novel driving lane change intent prediction model based on image data mining approach and transformer

Lane-changing represents not only a common driving behavior but also a potentially hazardous one. Accurately predicting lane change intentions plays a crucial role in enhancing road traffic safety and guiding autonomous vehicle planning. In this study, a Face-mesh model is used to extract salient fe...

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Bibliographic Details
Published inICT express Vol. 11; no. 3; pp. 467 - 472
Main Authors He, Junbo, Guan, Wei, Gou, Xuanyuan, Zhang, Zhiqing
Format Journal Article
LanguageEnglish
Published Elsevier B.V 01.06.2025
Elsevier
한국통신학회
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Summary:Lane-changing represents not only a common driving behavior but also a potentially hazardous one. Accurately predicting lane change intentions plays a crucial role in enhancing road traffic safety and guiding autonomous vehicle planning. In this study, a Face-mesh model is used to extract salient features from complex driver behavior data. Subsequently, by using the Farneback optical flow algorithm in conjunction with the ResNet-50 neural network, important lane change cues were extracted from the vehicle surroundings. The Transformer model was optimized using the Teacher-forcing training strategy and the Scheduled-sampling method, fostering faster convergence and heightened prediction accuracy. Empirical tests had shown that this model had attained an impressive precision of 98.61%, recall of 98.24 %, and an F1 score of 98.42 % when forecasting lane change intentions 0.5 s ahead.
ISSN:2405-9595
2405-9595
DOI:10.1016/j.icte.2025.01.004