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Open AccessArticle
PGTFT: A Lightweight Graph-Attention Temporal Fusion Transformer for Predicting Pedestrian Congestion in Shadow Areas
by
Jiyoon Lee
Jiyoon Lee 1
and
Youngok Kang
Youngok Kang 1,2,*
1
Department of Big Data Analytics, Ewha Womans University, Seoul 03760, Republic of Korea
2
Department of Social Studies (Geography), Ewha Womans University, Seoul 03760, Republic of Korea
*
Author to whom correspondence should be addressed.
ISPRS Int. J. Geo-Inf. 2025, 14(10), 381; https://doi.org/10.3390/ijgi14100381 (registering DOI)
Submission received: 13 August 2025
/
Revised: 21 September 2025
/
Accepted: 26 September 2025
/
Published: 28 September 2025
Abstract
Forecasting pedestrian congestion in urban back streets is challenging due to “shadow areas” where CCTV coverage is absent and trajectory data cannot be directly collected. To address these gaps, we propose the Peak-aware Graph-attention Temporal Fusion Transformer (PGTFT), a lightweight hybrid model that extends the Temporal Fusion Transformer by integrating a non-parametric attention-based Graph Convolutional Network, a peak-aware Gated Residual Network, and a Peak-weighted Quantile Loss. The model leverages both physical connectivity and functional similarity between roads through a fused adjacency matrix, while enhancing sensitivity to high-congestion events. Using real-world trajectory data from 38 CCTVs in Anyang, South Korea, experiments show that PGTFT outperforms LSTM, TFT, and GCN-TFT across different sparsity settings. Under sparse 5 m neighbor conditions, the model achieved the lowest MAE (0.059) and RMSE (0.102), while under denser 30 m settings it maintained superior accuracy with standard quantile loss. Importantly, PGTFT requires only 1.54 million parameters—about half the size of conventional Transformer–GCN hybrids—while delivering equal or better predictive performance. These results demonstrate that PGTFT is both parameter-efficient and robust, offering strong potential for deployment in smart city monitoring, emergency response, and transportation planning, as well as a practical approach to addressing data sparsity in urban sensing systems.
Share and Cite
MDPI and ACS Style
Lee, J.; Kang, Y.
PGTFT: A Lightweight Graph-Attention Temporal Fusion Transformer for Predicting Pedestrian Congestion in Shadow Areas. ISPRS Int. J. Geo-Inf. 2025, 14, 381.
https://doi.org/10.3390/ijgi14100381
AMA Style
Lee J, Kang Y.
PGTFT: A Lightweight Graph-Attention Temporal Fusion Transformer for Predicting Pedestrian Congestion in Shadow Areas. ISPRS International Journal of Geo-Information. 2025; 14(10):381.
https://doi.org/10.3390/ijgi14100381
Chicago/Turabian Style
Lee, Jiyoon, and Youngok Kang.
2025. "PGTFT: A Lightweight Graph-Attention Temporal Fusion Transformer for Predicting Pedestrian Congestion in Shadow Areas" ISPRS International Journal of Geo-Information 14, no. 10: 381.
https://doi.org/10.3390/ijgi14100381
APA Style
Lee, J., & Kang, Y.
(2025). PGTFT: A Lightweight Graph-Attention Temporal Fusion Transformer for Predicting Pedestrian Congestion in Shadow Areas. ISPRS International Journal of Geo-Information, 14(10), 381.
https://doi.org/10.3390/ijgi14100381
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