Vision for Crowd Management

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Vision for Crowd Management

 

Leveraging advanced vision technologies to optimize crowd analysis and facilitate effective management in diverse scenarios.

a. Abnormal Behavior Recognition in Crowds

This project investigates end-to-end abnormal behavior detection frameworks, leveraging a combination of GCN and 3D CNN. These approaches employ a one- class classifier, trained on abnormal scores with GCN to enhance detection by modeling similarities between video clips.

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b Croud Counting

This project addresses the challenges in crowd counting and density map estimation by proposing multi-task attention-based crowd counting networks. These networks incorporate density-level classification, density map estimation, and segmentation-guided attention to enhance accuracy in both sparse and crowded scenarios.

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c. Automatic Augmentation for Crowd Counting

This study introduces an automatic augmentation framework for crowd counting using deep reinforcement learning to address the challenge of insufficient labeled training samples. This project aims to employ the deep deterministic policy gradient for crowd counting.

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d. Person Localization in Spectator Crowds

This project introduces multi-person head segmentation algorithm using convolutional encoder-decoder networks for person head detection in crowded scenes. For this purpose, probability heatmaps are utilized. The algorithms excel in assigning probabilities to head pixels and capturing multiresolution information. It aims to simultaneously detect all heads and faces, that compensating down-sampling information loss.

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e. Action Recognition is Spectator Crowds:

This work aims to identify spectator actions in large crowds for security and saftey perspective. To address real-world surveillance scenarios, low resolution crowd videos are considered.

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