Exploring Domain Randomization's Effect on Synthetic Data for Activity Detection
The construction and operation of Metaverse virtual environments, e.g., 3D reconstruction and activity detection is an important supporting technology of computer vision. Recently, synthetic data has seen a surge in adoption for model training in computer vision. Prior research generally show a positive correlation between the volume of synthetic training data and inference accuracy. This paper focuses on the domain of activity detection, and explores how to improve the performance of such algorithms using synthetic data. In particular, we present an overview of the state-of-the-art in using domain randomization approaches for synthetic data generation. This paper presents initial inference accuracies of a model trained on initial attempts at domain randomized synthetic data (7.2%), compared to a model trained on real-world data (9.2%). The synthetic data, although performed worse, indicated promising trajectories for future work, approximately 2% away from the real-world result.
History
Journal/Conference/Book title
IEEE International Conference on Metaverse Computing, Networking and Applications (MetaCom), 26-28 June 2023, Kyoto, Japan.Publication date
2023-06-23Corresponding author
Megani RajendranProject ID
- 9183 Recognizing Temporal State Changes of Spatial Objects Over Time in Videos for Digital Assistants in Everyday Living