TY - GEN
T1 - Research on Vehicle Abnormal Behavior Detection Algorithm Based on Deep Learning
AU - Zhipeng, Sun
AU - Yuran, Li
AU - Xiyu, Fang
AU - Yugang, Li
AU - Qiang, Zhang
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - This paper proposes an innovative algorithm combining GCN and self-Attention mechanism for vehicle abnormal behavior detection. The algorithm first uses GCN to construct a graph structure of vehicles and road environments, which can effectively capture the complex spatial relationship between vehicles and between vehicles and road environments, thereby providing richer spatiotemporal features for abnormal behavior detection. Then, a self-Attention mechanism is introduced, which is used to adaptively select the key characteristics of the time series data, which can improve the forecasting capability and precision. In this paper, a lot of experiments are carried out on the data set of public transport behavior. The results indicate that the precision of this method is 99%, which is better than the conventional method by 16%. In addition, the proposed model also performs well in F1 value, precision and recall rate, reaching 0.94, 98.2% and 99.1% respectively, showing its high efficiency and reliability in abnormal behavior detection. Compared with the conventional algorithm, this algorithm is more efficient in computation and real time, and the detection delay is less than 150 ms, so it can satisfy the requirement of real time and precision.
AB - This paper proposes an innovative algorithm combining GCN and self-Attention mechanism for vehicle abnormal behavior detection. The algorithm first uses GCN to construct a graph structure of vehicles and road environments, which can effectively capture the complex spatial relationship between vehicles and between vehicles and road environments, thereby providing richer spatiotemporal features for abnormal behavior detection. Then, a self-Attention mechanism is introduced, which is used to adaptively select the key characteristics of the time series data, which can improve the forecasting capability and precision. In this paper, a lot of experiments are carried out on the data set of public transport behavior. The results indicate that the precision of this method is 99%, which is better than the conventional method by 16%. In addition, the proposed model also performs well in F1 value, precision and recall rate, reaching 0.94, 98.2% and 99.1% respectively, showing its high efficiency and reliability in abnormal behavior detection. Compared with the conventional algorithm, this algorithm is more efficient in computation and real time, and the detection delay is less than 150 ms, so it can satisfy the requirement of real time and precision.
KW - abnormal vehicle behavior detection
KW - anomaly detection
KW - Deep learning
KW - GCN
KW - intelligent transportation
KW - self-Attention mechanism
UR - http://www.scopus.com/inward/record.url?scp=105002567935&partnerID=8YFLogxK
U2 - 10.1109/ICPECA63937.2025.10928777
DO - 10.1109/ICPECA63937.2025.10928777
M3 - Conference contribution
AN - SCOPUS:105002567935
T3 - 2025 IEEE 5th International Conference on Power, Electronics and Computer Applications, ICPECA 2025
SP - 680
EP - 685
BT - 2025 IEEE 5th International Conference on Power, Electronics and Computer Applications, ICPECA 2025
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 5th IEEE International Conference on Power, Electronics and Computer Applications, ICPECA 2025
Y2 - 17 January 2025 through 19 January 2025
ER -