UAlberta Math Bio Seminar: Jay Newby
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The data association problem is the difficult part of the multi-object tracking problem. The problem is to:
(i) classify measurements (e.g., position, shape, etc) as true positives or false positives,
(ii) classify tracked objects as observed (i.e., measured) or unobserved at each time, and
(iii) constructing a map (for each time step) from observed objects to true positive measurements.
I will share a recent breakthrough in applying MCMC methodology for approximating the distribution of tracking "hypotheses": the distribution over all possible tracks from a given dataset. I will illustrate the result with examples from tracking objects in microscopy videos, including salmonella, nuclei in fungal syncytia, and diatoms.
Additional Information
Location: Hybrid (In-person: 3-25 SAB, Online: Join Zoom meeting (Meeting ID: 984 9769 5684; Passcode:32123)
Time: 3pm Mountain/ 2pm Pacific
Jay Newby, University of Alberta