Litcius/Paper detail

Crowd Counting in Diverse Environments Using a Deep Routing Mechanism Informed by Crowd Density Levels

Abdullah Alhawsawi, Sultan Daud Khan, Faizan Ur Rehman

2024Information15 citationsDOIOpen Access PDF

Abstract

Automated crowd counting is a crucial aspect of surveillance, especially in the context of mass events attended by large populations. Traditional methods of manually counting the people attending an event are error-prone, necessitating the development of automated methods. Accurately estimating crowd counts across diverse scenes is challenging due to high variations in the sizes of human heads. Regression-based crowd-counting methods often overestimate counts in low-density situations, while detection-based models struggle in high-density scenarios to precisely detect the head. In this work, we propose a unified framework that integrates regression and detection models to estimate the crowd count in diverse scenes. Our approach leverages a routing strategy based on crowd density variations within an image. By classifying image patches into density levels and employing a Patch-Routing Module (PRM) for routing, the framework directs patches to either the Detection or Regression Network to estimate the crowd count. The proposed framework demonstrates superior performance across various datasets, showcasing its effectiveness in handling diverse scenes. By effectively integrating regression and detection models, our approach offers a comprehensive solution for accurate crowd counting in scenarios ranging from low-density to high-density situations.

Topics & Concepts

Mechanism (biology)Computer scienceRouting (electronic design automation)Crowd sourcingHuman–computer interactionData scienceComputer securityComputer networkPhysicsQuantum mechanicsVideo Surveillance and Tracking MethodsEvacuation and Crowd DynamicsMobile Crowdsensing and Crowdsourcing