Beyond Counting: Comparisons of Density Maps for Crowd Analysis Tasks - Counting, Detection, and Tracking
Di Kang, Zheng Ma, Antoni B. Chan

TL;DR
This paper evaluates how different density map resolutions affect crowd analysis tasks like counting, detection, and tracking, highlighting the trade-offs and proposing new metrics for density map quality assessment.
Contribution
It systematically compares low- and high-resolution density maps for crowd analysis and introduces metrics to evaluate density map quality.
Findings
Lower-resolution density maps sometimes outperform in counting accuracy.
Original-resolution density maps improve localization tasks such as detection and tracking.
Proposed metrics effectively relate density map quality to task performance.
Abstract
For crowded scenes, the accuracy of object-based computer vision methods declines when the images are low-resolution and objects have severe occlusions. Taking counting methods for example, almost all the recent state-of-the-art counting methods bypass explicit detection and adopt regression-based methods to directly count the objects of interest. Among regression-based methods, density map estimation, where the number of objects inside a subregion is the integral of the density map over that subregion, is especially promising because it preserves spatial information, which makes it useful for both counting and localization (detection and tracking). With the power of deep convolutional neural networks (CNNs) the counting performance has improved steadily. The goal of this paper is to evaluate density maps generated by density estimation methods on a variety of crowd analysis tasks,…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Anomaly Detection Techniques and Applications · Advanced Neural Network Applications
