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Deep Learning Approaches for Crowd Density Estimation: A Review | IEEE Conference Publication | IEEE Xplore

Deep Learning Approaches for Crowd Density Estimation: A Review


Abstract:

The term “crowd density estimation” refers to the process of determining the number of people in a certain region or a specific area. This method has a wide range of appl...Show More

Abstract:

The term “crowd density estimation” refers to the process of determining the number of people in a certain region or a specific area. This method has a wide range of applications, including urban planning, healthcare, emergency response, public safety, and strategic planning. Occlusion, size and perspective distortion, and uneven distribution all pose problems for crowd counting systems. Calculations grow increasingly complex as population density increases. The considerable contributions of deep convolutional neural networks (CNNs) and developments in datasets have contributed to the notable progress in crowd counting approaches in recent years. This study examines both standard and deep learning-based crowd counting approaches in depth. It investigates detection-based, regression-based, and traditional density estimate methods. The 10 most recent works on crowd counting using deep learning are reviewed, with an emphasis on estimating crowd density and count from available photos. The research also looks at regularly utilized datasets. The findings of these investigations indicate a high level of precision, demonstrating the promise of AI in crowd counting. Notably, the approaches and algorithms used to handle the issues of crowd counting and density mapping vary significantly between articles. The research investigates prospective uses of crowd counting as well as the accompanying obstacles. Various crowd counting models and methodologies are examined, stressing the range of approaches to dealing with the problems of crowd counting and density mapping.
Date of Conference: 22-23 December 2023
Date Added to IEEE Xplore: 19 February 2024
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Conference Location: Moradabad, India

I. Introduction

The global population is rapidly increasing, with an estimated annual rise of 72 million people, and this trend is projected to continue. As a result, there has been a significant increase in stampede incidents, which frequently occur in situations when big crowds lack effective management, resulting in potentially catastrophic scenarios. Inadequate crowd control, spontaneous rushes for rescue, and seemingly unexplainable disturbances all contribute to these dangerous circumstances. Public gatherings, such as athletic events, political demonstrations, and music concerts, typically draw large audiences, demanding increased security measures. CCTVs are used for a variety of reasons in crowd management, including traffic control, monitoring public locations, anomaly detection, and crowd counting. The value of crowd analysis in management is highlighted by catastrophic events such as the mob crush in Houston, Texas, which took eight lives. Crowd turbulence can be exacerbated by public fear, mob crushes, and a breakdown in authority, making it critical to recognize and handle unmanaged crowds as soon as possible. While human surveillance can detect and respond to odd behaviour, monitoring multiple signals at once in crowded crowds has inherent limits. Tools in the field of crowd analysis have been developed to overcome this difficulty. The academic community has made major contributions to the development of frameworks for autonomous crowd counting in video surveillance, which represents a promising domain within modern AI. However, significant datasets are required to train deep networks for people counting in densely packed images. Traditionally, three ways to crowd counting have been used: the crowd-oriented method, which uses an object detector with a sliding window methodology to count individuals in images, the regression-based method, and the density map-oriented approach.

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