UOW LargeScale Combined Action3D

Large Scale Combined RGB-D Action Dataset

Human activity understanding from RGB-D data has attracted increasing attention since the first work reported in 2010. Over this period, many benchmark datasets have been created to facilitate the development and evaluation of new algorithms. However, the existing datasets are mostly captured in laboratory environment with small number of actions and small variations, which impede the development of higher level algorithms for real world applications. Thus, this paper proposes a large scale dataset along with a set of evaluation protocols. The large dataset is created by combining nine existing publicly available datasets and can be expanded easily by adding more datasets. The large dataset has 94 actions and is suitable for testing algorithms from different perspectives using the proposed evaluation protocols. Four state-of-the-art algorithms are evaluated on the large combined dataset and the results have verified the limitations of current algorithms and the effectiveness of the large dataset.

Readers are referred to the following paper on details. If you are to use the combined dataset, Please cite the following paper as well as all the original papers of individual datasets.

  1. Zhang, Jing and Li, Wanqing and Wang, Pichao and Ogunbona, Philip and Liu, Song and Tang, Chang, A Large Scale RGB-D Dataset for Action Recognition, International Workshop on Understanding Human Activities through 3D Sensors (UHA3DS) 2016 in conjunction with 23rd International Conference on Pattern Recognition (ICPR2016).