Abstract. Drastic variations in illumination across surveillance cameras
make the person re-identification problem extremely challenging. Current
large scale re-identification datasets have a significant number of training
subjects, but lack diversity in lighting conditions. As a result, a trained
model requires fine-tuning to become effective under an unseen illumination condition. To alleviate this problem, we introduce a new synthetic
dataset that contains hundreds of illumination conditions. Specifically,
we use 100 virtual humans illuminated with multiple HDR environment
maps which accurately model realistic indoor and outdoor lighting. To
achieve better accuracy in unseen illumination conditions we propose
a novel domain adaptation technique that takes advantage of our synthetic data and performs fine-tuning in a completely unsupervised way.
Our approach yields significantly higher accuracy than semi-supervised
and unsupervised state-of-the-art methods, and is very competitive with
supervised techniques