George Papandreou -- Home Page (original) (raw)

About Me

Since December 2014 I have been working at Google as Research Scientist. I will continue to update this web page.

I am a Research Assistant Professor at the Toyota Technological Institute at Chicago. My research interests are in computer vision, machine learning, and multimodal perception. My current focus is on deep learning. I approach these problems with methods from Bayesian statistics, signal processing, and applied mathematics.

From 2009 to 2013 I was a Postdoctoral Research Scholar atUCLA, working with Prof. Alan Yuille. I hold a Diploma (2003) and a PhD (2009) in Electrical and Computer Engineering from NTUA, Greece, where I was a CVSP group member, advised byProf. Petros Maragos.

[CV…] [Bio…]

Recent Research Highlight: Deep Epitomic Convolutional Networks

Deep Epitomic Convolution I have been exploring the powerful epitomic data structure for transformation-aware image analysis and recognition. Building on image epitomes, I have developed a new BoW-type model using a dictionary of flat mini-epitomes learned in an unsupervised fashion from raw images. In my most recent work in the context of deep learning, I have proposed the epitomic convolution layer as a powerful replacement of a consecutive pair of convolution and max-pooling layers.Deep epitomic nets along with explicit scale/position search have been the key ingredients in our TTIC_ECP entry to the Imagenet LSVRC 2014 image classification competition, achieving 10.2% top-5 error rate, a 3% performance improvement over a baseline conventional max-pooled convnet.[CVPR 2014] [arXiv] [ILSVRC results] [ILSVRC workshop]

Recent Research Highlight: Perturb-and-MAP Random Fields

Perturb-and-MAP I have been developing a new Perturb-and-MAP framework for one-shot random sampling in Gaussian or discete-label Markov random fields (MRF). Perturb-and-MAP random fields turn powerful deterministic energy minimization methods into efficient random sampling algorithms. By avoiding costly MCMC, one can generate in a fraction of a second independent random samples from million-node networks. Applications include model parameter estimation and solution uncertainty quantification in computer vision applications.For an overview, see my review article which appears as book chapter in the recently published MIT Press book on Advanced Structured Prediction.[Read more…]

News