An Experimental Analysis of Deep Learning Models for Human Activity Recognition with Synthetic Data

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

Categories

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