AGORA is a synthetic human dataset with high realism and accurate ground truth. It consists of around 14K training and 3K test images by rendering between 5 and 15 people per image using either image-based lighting or rendered 3D environments, taking care to make the images physically plausible and photoreal. In total, AGORA contains 173K individual person crops.
AGORA provides (1) SMPL/SMPL-X parameters and (2) segmentation masks for each subject in images.
Variants: AGORA
This dataset is used in 2 benchmarks:
Recent papers with results on this dataset: