Preethi Salian K.

Work place: Department of Information Science and Engineering NMAM Institute of Technology, NITTE (Deemed to be University), Nitte, Karnataka, India

E-mail: preethi.salian@nitte.edu.in

Website: https://orcid.org/0009-0006-0320-9549

Research Interests:

Biography

Preethi Salian K. is currently an Assistant Professor in the Department of Information Science Engineering at NMAM Institute of Technology, Nitte(Deemed to be University), Karkala. She earned her Ph.D. in Computer Science and engineering from the Srinivas University, Mukka, Mangalore. She holds a B.E. degree in Computer Science and Engineering from St. Joseph Engineering College, Mangalore, and MTech degree in Computer Science and Engineering from NMAM Institute of Technology, Nitte, India. With over 11 years of experience in teaching and research, her research interests include Deep Learning and Computer Vision.

Author Articles
Leveraging Deep Learning Approach for the Detection of Human Activities from Video Sequences

By Preethi Salian K. Karthik K.

DOI: https://doi.org/10.5815/ijigsp.2025.06.05, Pub. Date: 8 Dec. 2025

Using deep learning approaches, recognizing human actions from video sequences by automatically deriving significant representations has demonstrated effective results from unprocessed video information. Artificial intelligence (AI) systems, including monitoring, automation, and human-computer interface, have become crucial for security and human behaviour analysis. For the visual depiction of video clips during the training phase, the existing action identification algorithms mostly use pre-trained weights of various AI designs, which impact the characteristics discrepancies and perseverance, including the separation among the visual and temporal indicators. The research proposes a 3-dimensional Convolutional Neural Network and Long Short-Term Memory (3D-CNN-LSTM) network that strategically concentrates on useful information in the input frame to recognize the various human behaviours in the video frames to overcome this problem. The process utilizes stochastic gradient descent (SGD) optimization to identify the model parameters that best match the expected and observed outcomes. The proposed framework is trained, validated, and tested using publicly accessible UCF11 benchmark dataset. According to the experimental findings of this work, the accuracy rate was 93.72%, which is 2.42% higher compared to the state-of-the-art previous best result. When compared to several other relevant techniques that are already in use, the suggested approach achieved outstanding performance in terms of accuracy. 

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