Dynamic Cross-Modal Alignment for Robust Semantic Location Prediction
Journal:
arXiv
Published Date:
Dec 13, 2024
Abstract
Semantic location prediction from multimodal social media posts is a critical
task with applications in personalized services and human mobility analysis.
This paper introduces \textit{Contextualized Vision-Language Alignment
(CoVLA)}, a discriminative framework designed to address the challenges of
contextual ambiguity and modality discrepancy inherent in this task. CoVLA
leverages a Contextual Alignment Module (CAM) to enhance cross-modal feature
alignment and a Cross-modal Fusion Module (CMF) to dynamically integrate
textual and visual information. Extensive experiments on a benchmark dataset
demonstrate that CoVLA significantly outperforms state-of-the-art methods,
achieving improvements of 2.3\% in accuracy and 2.5\% in F1-score. Ablation
studies validate the contributions of CAM and CMF, while human evaluations
highlight the contextual relevance of the predictions. Additionally, robustness
analysis shows that CoVLA maintains high performance under noisy conditions,
making it a reliable solution for real-world applications. These results
underscore the potential of CoVLA in advancing semantic location prediction
research.