Physics-Guided Temporal Fusion for Lane-Change Intention Prediction
Jiazhao Shi, Ziyu Wang, Yichen Lin, Shoufeng Lu

TL;DR
This paper introduces TPI-AI, a hybrid AI framework that combines deep temporal learning with physics-inspired features to improve lane-change intention prediction in autonomous driving across diverse scenarios.
Contribution
The paper presents a novel hybrid framework integrating temporal deep learning with physics-based interaction cues for more accurate lane-change intention prediction.
Findings
TPI-AI outperforms baseline models in macro-F1 scores across datasets.
Combining physics-inspired features with temporal embeddings enhances robustness.
The approach achieves high prediction accuracy at multiple time horizons.
Abstract
Lane-change intention prediction is safety-critical for autonomous driving and ADAS, but remains difficult in naturalistic traffic due to noisy kinematics, severe class imbalance, and limited generalization across heterogeneous highway scenarios. We propose Temporal Physics-Informed AI (TPI-AI), a hybrid framework that fuses deep temporal representations with physics-inspired interaction cues. A two-layer bidirectional LSTM (Bi-LSTM) encoder learns compact embeddings from multi-step trajectory histories; we concatenate these embeddings with kinematics-, safety-, and interaction-aware features (e.g., headway, TTC, and safe-gap indicators) and train a LightGBM classifier for three-class intention recognition (No-LC, Left-LC, Right-LC). To improve minority-class reliability, we apply imbalance-aware optimization including resampling/weighting and fold-wise threshold calibration.…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Traffic control and management · Adversarial Robustness in Machine Learning
