Robotics & Machine Learning Daily News2024,Issue(Feb.21) :9-10.DOI:10.3233/jifs-233919

Findings from Reva University Provides New Data about Machine Learning (Enhancing Temple Surveillance Through Human Activity Recognition: a Novel Dataset and Yolov4-convlstm Approach)

Robotics & Machine Learning Daily News2024,Issue(Feb.21) :9-10.DOI:10.3233/jifs-233919

Findings from Reva University Provides New Data about Machine Learning (Enhancing Temple Surveillance Through Human Activity Recognition: a Novel Dataset and Yolov4-convlstm Approach)

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Abstract

Researchers detail new data in Machine Learning. According to news reporting originating in Karnataka, India, by NewsRx journalists, research stated, “Automated identification of human activities remains a complex endeavor, particularly in unique settings like temple environments. This study focuses on employing machine learning and deep learning techniques to analyze human activities for intelligent temple surveillance.” The news reporters obtained a quote from the research from Reva University, “However, due to the scarcity of standardized datasets tailored for temple surveillance, there is a need for specialized data. In response, this research introduces a pioneering dataset featuring Eight distinct classes of human activities, predominantly centered on hand gestures and body postures. To identify the most effective solution for Human Activity Recognition (HAR), a comprehensive ablation study is conducted, involving a variety of conventional machine learning and deep learning models. By integrating YOLOv4’s robust object detection capabilities with ConvLSTM’s ability to model both spatial and temporal dependencies in spatio-temporal data, the approach becomes capable of recognizing and understanding human activities in sequences of images or video frames. Notably, the proposed YOLOv4-ConvLSTM approach emerges as the optimal choice, showcasing a remarkable accuracy of 93.68%.”

Key words

Karnataka/India/Asia/Cyborgs/Emerging Technologies/Machine Learning/Reva University

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出版年

2024
Robotics & Machine Learning Daily News

Robotics & Machine Learning Daily News

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