Goel et al., 2024 - Google Patents

Learning Models in Crowd Analysis: A Review

Goel et al., 2024

Document ID
6118734796801210235
Author
Goel S
Koundal D
Nijhawan R
Publication year
Publication venue
Archives of Computational Methods in Engineering

External Links

Snippet

Crowd detection and counting are important tasks in several applications of crowd analysis including traffic management, public safety and event planning. Automatic crowd counting using images and videos is an intriguing but complex issue that has generated considerable …
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Classifications

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