Projects

BeholderGAN: Generative model for face beautification / Eli Schwartz

Beauty is in the eye of the beholder. This maxim, emphasizing the subjectivity of the perception of beauty, has enjoyed a wide consensus since ancient times. In the digital era, data-driven methods have been shown to be able to predict human-assigned beauty scores for facial images. In this work, we augment this ability and train a generative model that generates faces conditioned on a requested beauty score. In addition, we show how this trained generator can be used to beautify an input face image. By doing so, we achieve an unsupervised beautification model, in the sense that it relies on no ground truth target images.

Virtual Objects in Physical Spaces - Academic Research on HCI in AR / Lev Poretski

I will present my latest research on psychological perception of virtual objects in AR.

Opening Succulent / Inbar Donag

NetVRk / Moshe Kleyner

A tool for creating, sharing and monetizing VR content.