An Experimental Analysis of Deep Learning Models for Human Activity Recognition with Synthetic Data
Abstract
In this paper, an experimental study of state-of-the-art techniques in Human Activity Recognition (HAR) is presented. Different Deep Learning algorithms, including CNNs and RNNs, are examined and compared. The experimental part is done using two real-life datasets Kinetics-400 and UCF-101 and one synthetic – SURREACT. All of them are used both for training and testing. The models – SlowFast, X3D and MViT are evaluated using accuracy top-1, and the results are identifying the best-performing combinations of dataset and model. One important question this study is trying to answer is whether a synthetic dataset can replace a real-world one. Finally, limitations and future directions are discussed, along with potential real-world applications.
Authors
- Desislava Nikolova
- Ivaylo Vladimirov
- Agata Manolova
Venue
2023 58th International Scientific Conference on Information, Communication and Energy Systems and Technologies (ICEST)
Links
https://ieeexplore.ieee.org/document/10187343
