Author
Listed:
- Shazab Bashir
- Arfan Jaffar
- Muhammad Rashid
- Sheeraz Akram
- Sohail Masood Bhatti
Abstract
Recognition of Human Actions (HAR) Portrays a crucial significance in various applications due to its ability for analyzing behaviour of humans within videos. This research investigates HAR in Red, Green, and Blue, or RGB videos using frameworks for deep learning. The model’s ensemble method integrates the forecasts from two models, 3D-AlexNet-RF and InceptionV3 Google-Net, to improve accuracy in recognizing human activities. Each model independently predicts the activity, and the ensembles method merges these predictions, often using voting or averaging, to produce a more accurate and reliable final classification. This approach leverages the advantages of each design, leading to enhanced performance recognition for activities. The performance of our ensemble framework is evaluated on our contesting HMDB51 dataset, known for its diverse human actions. Training the Inflated-3D (I3D) video classifiers using HMDB51 dataset, our system aims to improve patient care, enhance security, surveillances, Interaction between Humans and Computers, or HCI, and advance human-robot interaction. The ensemble model achieves exceptional results in every class, with an astounding aggregate accuracy of 99.54% accuracy, 97.94% precision, 97.94% recall, 99.56% specificity, 97.88% F1-Score, 95.43% IoU,97. 36% MCC and Cohen’s Kappa 97.17%. These findings suggest that the ensemble model is highly effective & a powerful tool for HAR tasks. Multi-tiered ensembles boost wearable recognition, setting a new gold standard for healthcare, surveillance, and robotics.
Suggested Citation
Shazab Bashir & Arfan Jaffar & Muhammad Rashid & Sheeraz Akram & Sohail Masood Bhatti, 2025.
"Intelligent recognition of human activities using deep learning techniques,"
PLOS ONE, Public Library of Science, vol. 20(4), pages 1-20, April.
Handle:
RePEc:plo:pone00:0321754
DOI: 10.1371/journal.pone.0321754
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