Abstract
Centralized ITS suffer from privacy leakage and poor cross-regional scalability, while human
factors (e.g., driver cognitive state, personalized needs) are often overlooked. To solve these
issues, this paper presents a privacy-preserving human-centric traffic framework based on
federated learning (FL). The framework’s core innovations include: (1) dynamic sparse
training to cut communication costs without performance loss; (2) few-shot adaptation to
enable deployment in data-scarce regions; (3) multimodal modules (spoken language
understanding, zero-shot recommendation) for intuitive human-ITS interaction; (4) driver
state inference to adapt alerts based on cognitive status. A standardized evaluation using
SBM-DEA measures technical efficiency, user experience, and adaptability. Results on two
traffic datasets demonstrate 2.30 prediction MAE (18.7% better than FedAvg), 18.1
MB/round communication cost, and 0.89 DEA efficiency score. This framework advances
ITS by unifying privacy protection, human-centric design, and rigorous performance
assessment.


