Exploration Of Mental Deterioration And Patriarchal Oppression In The Yellow Wallpaper Through The Theory Of Personality

Authors

  • Gul-e-Marjan Durrani BS.Scholar, Department of English, Hamdard University, Karachi Author
  • Naseeb Fatima Bs.Scholar, Department of English, Hamdard University, Karachi Author
  • Hafiz Imran Nawaz Senior Lecturer, Department of English, Hamdard University, Karachi Author

DOI:

https://doi.org/10.63075/qhp3gc30

Abstract

Effective crowd management is critical for ensuring public safety during large-scale events and in densely populated urban environments. Recent advances in deep learning and computer vision have enabled real-time crowd behavior analysis, including the detection of abnormal actions such as pushing, which can lead to dangerous situations. This paper presents a review of cloud-based deep learning frameworks, focusing on the use of convolutional neural networks (CNN) and optical flow models for early detection of pushing behavior in crowded event entrances. We discuss the integration of pre-trained deep models with live video stream processing to achieve high accuracy and low latency. Existing datasets and evaluation metrics are examined, with reported detection accuracies reaching up to 87%. The review also highlights challenges such as data privacy, real-time processing constraints, and the need for comprehensive models that consider multiple behavioral and environmental factors. Finally, future directions are proposed for developing autonomous crowd safety systems that mimic human situational awareness in complex urban settings.

Downloads

Download data is not yet available.

Downloads

Published

2025-05-25

How to Cite

Exploration Of Mental Deterioration And Patriarchal Oppression In The Yellow Wallpaper Through The Theory Of Personality. (2025). Annual Methodological Archive Research Review, 3(5), 412-422. https://doi.org/10.63075/qhp3gc30