During this project, we have developed new approaches and theories for Self-Supervised Deep Learning, by exploiting the internal redundancy inside a single natural image/video. We coined it “Deep Internal Learning”. The strong recurrence of information inside a single natural image/video provides powerful internal examples which suffice for training Deep Networks, without any prior examples or training data. This new “Deep Internal Learning” paradigm gives rise to true “Zero-Shot Learning”. We have demonstrated the power of this approach to a range of problems, including super-resolution (in images – CVPR’2018; in videos – ECCV’2020), image-segmentation, transparent layer separation, blind image-dehazing (CVPR’2019), image-retargeting (ICCV’2019), blind super-resolution (NeurIPS’2019), diverse image & video generations (CVPR’2022 & ECCV’2022), diverse video interpolation and extrapolation (ICML’2023), and more. We have also shown how such self-supervision can be used for reconstructing images from brain recordings (fMRI) with very few external training data (NeurIPS’2019), for image classification from fMRI brain activity (NeuroImage’2022), and for video reconstruction from fMRI (arXiv’2022).
More recently we have shown that the notion of “Internal Learning” can further be applied to recover the training data of a trained classifier, directly from the parameters of the network (NeurIPS’2022, ICLRworkshop’2023, NeurIPS’2023). Our findings have serious negative implications on Data Privacy in Deep Learning.
During the project the team published 18 research papers summarizing different aspects of the project goals, 15 of which were peered reviewed and published in the leading international journals and/or conferences including: Nature Communications, NeuroImage, NeurIPS, CVPR, ICCV, ECCV, ICML. These papers present excellent progress compared to the original plan, and beyond. We have made the code and data of the published papers available (where applicable). We further have a few new papers currently in preparation or under review (not published yet), which contain additional new exciting breakthroughs.