Effectiveness of synthetic image data in training human action recognition models

Date

2024

Authors

Man, K.
Chahl, J.

Editors

Akmeliawati, R.
Sergiienko, N.
Harvey, D.
Yang, L.J.
Park, H.C.

Advisors

Journal Title

Journal ISSN

Volume Title

Type:

Book chapter

Citation

Event/exhibition information: 19th International Conference of Intelligent Unmanned Systems, ICIUS 2023, Adelaide, Australia, 05/07/2023-07/07/2023 Source details - Title: Proceedings of the 19th International Conference on Intelligent Unmanned Systems, 2024 / Akmeliawati, R., Sergiienko, N., Harvey, D., Yang, L.J., Park, H.C. (ed./s), vol.1248 LNEE, pp.203-210

Statement of Responsibility

Conference Name

Abstract

The growing trend of using large image datasets to support the training of computer vision algorithms in applications such as unmanned systems has seen a push towards the use of synthetic image data as an alternative source of data. Synthetic data has the potential enable the use of computer vision in applications that would previously have insufficient data to train a good model. However, the use of synthetic data to train machine learning models is not without caveats. The effectiveness of synthetic data as a training source, as compared with real data, is difficult to evaluate. Different papers that have explored the use of synthetic data have noted varying levels of effectiveness depending on the type of synthetic data tested and the type of model being trained. Outside of a general consensus that synthetic data is likely not detrimental, there is limited information available on what effect different synthesis parameters can have on the effectiveness of synthesised data. This paper evaluates the performance of composite synthetic data by training a human pose and action recognition model, investigating the effect different synthesis parameters have on a model trained using real and synthetic data.

School/Discipline

Dissertation Note

Provenance

Description

Access Status

Rights

Copyright 2024 The Author(s), under exclusive license to Springer Nature Singapore Access Condition Notes: Accepted manuscript available after 1 January 2026

License

Grant ID

Call number

Persistent link to this record