Perceiving Systems, Computer Vision

AGORA dataset

2021-06-22


While the accuracy of 3D human pose estimation from images has steadily improved on benchmark datasets, the best methods still fail in many real-world scenarios. This suggests that there is a domain gap between current datasets and common scenes containing people. To evaluate the current state-of-the-art methods on more challenging images, and to drive the field to address new problems, we introduce AGORA, a synthetic dataset with high realism and highly accurate ground truth. We create 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 consists of 173K individual person crops.

Author(s): Patel, P., Huang, C. P., Tesch, J., Hoffmann, D. T., Tripathi, S., Black, M. J.
Department(s): Perceiving Systems
Authors: Patel, P., Huang, C. P., Tesch, J., Hoffmann, D. T., Tripathi, S., Black, M. J.
Release Date: 2021-06-22
Repository: https://github.com/pixelite1201/agora_evaluation
External Link: https://agora.is.tue.mpg.de/