| Home > Publications database > A Fast Hybrid Deep Neural Network Model for pushing behavior detection in human crowds |
| Contribution to a conference proceedings | FZJ-2022-06229 |
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2023
IEEE
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Please use a persistent id in citations: http://hdl.handle.net/2128/33797 doi:10.1109/AICCSA56895.2022.10017883
Abstract: Deep learning technology is regarded as one of the latest advances in data science and analytics due to its learning abilities from the data. As a result, deep learning is widely applied in the human crowd analysis domain. Although it has achieved remarkable success in this area, a fast and robust model for pushing behavior detection in the human crowd is unavailable. This paper proposes a model that allows crowd-monitoring systems to detect pushing behavior early, helping organizers make timely decisions before dangerous situations appear. This particularly becomes more challenging when applied to real-time video streams of crowded events, which the proposed model accomplishes with reasonable time latency. To achieve this, the model employs a hybrid deep neural network.
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