Back to Search Start Over

Over-crowdedness Alert! Forecasting the Future Crowd Distribution

Authors :
Niu, Yuzhen
Shi, Weifeng
Liu, Wenxi
He, Shengfeng
Pan, Jia
Chan, Antoni B.
Publication Year :
2020

Abstract

In recent years, vision-based crowd analysis has been studied extensively due to its practical applications in real world. In this paper, we formulate a novel crowd analysis problem, in which we aim to predict the crowd distribution in the near future given sequential frames of a crowd video without any identity annotations. Studying this research problem will benefit applications concerned with forecasting crowd dynamics. To solve this problem, we propose a global-residual two-stream recurrent network, which leverages the consecutive crowd video frames as inputs and their corresponding density maps as auxiliary information to predict the future crowd distribution. Moreover, to strengthen the capability of our network, we synthesize scene-specific crowd density maps using simulated data for pretraining. Finally, we demonstrate that our framework is able to predict the crowd distribution for different crowd scenarios and we delve into applications including predicting future crowd count, forecasting high-density region, etc.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2006.05127
Document Type :
Working Paper