Videos

Self-supervised learning for visual recognition

Presenter
May 21, 2019
Abstract
Hamed Pirsiavash - University of Maryland Baltimore County We are interested in learning visual representations (features) that are discriminative for semantic image understanding tasks such as object classification, detection, and segmentation in images. A common approach to obtain such features is to use supervised learning. However, this requires manual annotation of images, which is costly, time-consuming, and prone to errors. In contrast, unsupervised or self-supervised feature learning methods exploiting unlabeled data can be much more scalable and flexible. I will present some of our recent efforts in this direction.