Bayesian methods for low-illumination sensing and imaging

Nov09Wed

Bayesian methods for low-illumination sensing and imaging

Wed, 09/11/2016 - 12:15

Location:

Speaker: 
Dr Yoann Altmann
Affiliation: 
Heriot-Watt University
Synopsis: 

Recent advances in fast and sensitive detectors have enabled the observation of physical phenomena from extremely sparse and noisy measurements. For instance, state-of-the-art single-photon detectors are able to quantify light at the particle level and find applications in several domains ranging from
biomedical imaging (fluorescence microscopy) to remote sensing (forest canopy monitoring) and defense. Analyzing such data, acquired under low-illumination conditions, using computational methods often consists of solving inverse problems that are ill-conditioned or ill-posed and thus difficult to solve. Moreover, the data quality induces significant intrinsic uncertainty about the solution obtained, which can limit significantly the value of algorithm outputs as evidence for scientific inquiry, sensor fusion and decision-making.

This talk illustrates how advanced Bayesian methods can be used to solve complex and high dimensional inverse problems by combining, in a formalised framework, observed data or images with additional information a-priori available. In particular, this talk will concentrate on stochastic simulation (Markov chain Monte Carlo, MCMC) methods to solve large-scale model selection problems while providing measures of uncertainty about parameters of interest. The proposed methodology is illustrated on a target detection problem from sparse single-photon Lidar waveforms, where an efficient adaptive reversible-jump MCMC method is proposed to compute posterior probabilities of target presence.

Biography: 

Yoann Altmann received the M.Eng. degree in electrical engineering from Ecole Nationale Superieure d’Electronique, d’Electrotechnique, d’Informatique, d’Hydraulique et des Télécommunications, Toulouse, and the M.Sc. degree in signal processing from the National Polytechnic Institute of Toulouse (INP Toulouse), Toulouse, both in 2010, and the Ph.D. degree from INP Toulouse in 2013.

Since 2014, he has been with the Heriot-Watt University, Edinburgh, as a Post-Doctoral Researcher. He conducts his research within the Institute of Sensors, Signals and Systems, School of Engineering and Physical Sciences. His current research activities focus on statistical signal and image processing, with a particular interest in Bayesian inverse problems with applications to remote sensing and biomedical imaging.

Institute: