Capturing the “Invisible”: Computational Imaging for Robust Sensing and Vision
Date and Time
Tuesday, April 4, 2017 - 12:30pm to 1:30pm
Location
Computer Science Small Auditorium (Room 105)
Type
CS Department Colloquium Series
Speaker
Host
Prof. Szymon Rusinkiewicz
In this talk, I will present several examples of algorithms that computationally resolve this ambiguity and make sensing and vision systems robust. These methods rely on three key ingredients: accurate probabilistic forward models, learned priors, and efficient large-scale optimization methods. In particular, I will show how to achieve better low-light imaging using cell-phones (beating Google's HDR+), and how to classify images at 3 lux (substantially outperforming very deep convolutional networks, such as the Inception-v4 architecture). Using a similar methodology, I will discuss ways to miniaturize existing camera systems by designing ultra-thin, focus-tunable diffractive optics. Finally, I will present new exotic imaging modalities which enable new applications at the forefront of vision and imaging, such as seeing through scattering media and imaging objects outside direct line of sight.
Felix Heide is a postdoctoral research working with Professor Gordon Wetzstein in the Department of Electrical Engineering at Stanford University. He is interested in the theory and application of computational imaging and vision systems. Researching imaging systems end-to-end, Felix's work lies at the intersection of optics, machine learning, optimization, computer graphics and computer vision. Felix has co-authored over 25 publications and filed 3 patents. He received his Ph.D. in December 2016 at the University of British Columbia under the advisement of Professor Wolfgang Heidrich. His doctoral dissertation focuses on optimization for computational imaging and won the Alain Fournier Ph.D. Dissertation Award.