Abnormal Event Detection in Human Activity Using Deep Learning

Authors

  • Ms. G Roshini PG Student, Kings Engineering College, Sriperumbudhur, Tamil Nadu, India Author
  • Dr. G. Manikandan Professor, Kings Engineering College, Sriperumbudhur, Tamil Nadu, India Author
  • Ms. S. Hemalatha Assistant Professor, Kings Engineering College, Sriperumbudhur, Tamil Nadu, India Author
  • Ms. Vilma Veronica Assistant Professor, Kings Engineering College, Sriperumbudhur, Tamil Nadu, India Author

DOI:

https://doi.org/10.32628/IJSRST52411225

Keywords:

Unsupervised Learning, Abnormal, CCTV, Semi - Supervised Learning

Abstract

Abnormal event detection, human behavior detection, as well asobject recognition plays a vital role in the creation of a smart CCTV system. These systems make it possibleto detect abnormal events in an environment, abnormal behaviors by humans, and the state of alert in the environment. Machine Vision propertyalong with Machine Learning are used in these systems to detect as well as identify the particular anomalies that arise in the video feed from the CCTV. Frame by frame processing is commonly used and Supervised Learning is the commonly used training method for these systems. However, since the anomalies are of many different kinds and also because it is not feasible to pre- detect and train all types of anomalies, supervised learning is being replaced by unsupervised learning and semi - supervised learning for training the system. This system provides a means of minimising or removing the human workload that has to be put on to manually detect and create an alert on detection of an abnormality in the live feed provided by the CCTV. Also, the system increases the storage efficiency by storing only the abnormal events in original quality and storing the normal scenarios in low quality for archiving. Also, this system provides an extension of creating a distributed abnormality classification system, where only the abnormal events are sent on to different dedicated systems to classify the abnormality.              

Downloads

Download data is not yet available.

References

Jaime Duque Domingo, JaimeGomez-Garcia-Bermejoand Eduardo Zalama, ImprovingHumanActivityRecognitionIntegratingLSTMWithDifferentData Sources: Features, Object Detection and Skeleton Tracking, 27 June 2022.

Shibo Zhang, YaxuanLi, Yu Deng, DeepLearninginHumanActivity Recognition WithWearable Sensors : AReviewon Advances, 2022.

R.G.Ramos,J.D.Domingo,E.Zalama,andJ.Gómez-García-Bermejo,Daily human activity recognition using non-intrusive sensors,‘‘ Sensors, vol. 21, no. 16, p. 5270, Aug. 2021.

C.Zhang,Y.Zou,G.Chen,andL.Gan,PAN:Towardsfastactionrecognition via learning persistence of appearance,‘‘ 2020, arXiv:2008.03462.

Zawar,H.,Q.Z.Sheng, W.EmmaZhang,AReviewandCategorizationof Techniques on Device-Free Human Activity Recognition,2020.

Zhao,H.,X.,JinHumanActionRecognitionBasedonImprovedFusionAttention CNN & RNN, 2020.

D. Tran, H. Wang, M. Feiszli, and L. Torresani, Video classification with channel-separated convolutional networks,‘‘ Oct. 2019.

Hu, X., Huang, Y., Duan, Abnormal event detection in crowded scenes using histogram of oriented contextual gradient descriptor,2018

Wang, T., Qiao,M., Deng, Y.,& Snoussi, H, Abnormal event detection based on analysis of movement information of video sequence. Optik, 152, 50-60, 2018.

Xue, L., Xiandong, S., Lanshun, N., Jiazhen, L., Renjie, D., Dechen, Z., & Dianhui, C, Understanding and improving deep neural network for activity recognition, arXiv preprint arXiv:1805.07020, 2018.

Downloads

Published

13-03-2024

Issue

Section

Research Articles

How to Cite

Abnormal Event Detection in Human Activity Using Deep Learning . (2024). International Journal of Scientific Research in Science and Technology, 11(2), 177-181. https://doi.org/10.32628/IJSRST52411225

Most read articles by the same author(s)

Similar Articles

1-10 of 69

You may also start an advanced similarity search for this article.