Monday
April 6
4:00 - 4:50 PM 
Kelley 1001

 

Tomas Singliar 
Boeing Research and Technology
Seattle, WA




Learning to detect vehicular incidents from noisy data 

Many deployed traffic incident detection systems use algorithms that
require significant manual tuning. We want to develop a learning
detector to reduce the need for manual adjustments by taking advantage
of a massive database of traffic sensor network measurements. First, we
show that a rather straightforward supervised learner based on the SVM
model outperforms a fixed detection model used by state-of-the-art
traffic incident detectors. Second, we seek further improvements of
learning performance by correcting misaligned incident times in the
training data. The misalignment is due to an imperfect incident logging
procedure. We propose a label realignment model based on a dynamic
Bayesian network to re-estimate the correct position (time) of the
incident in the data. Training on the automatically realigned data
consistently leads to improved detection performance in the low false
positive region. 

The data realignment framework requires inference in dynamic Bayesian
networks. This is a computationally intensive process. However, for a
class of networks naturally arising in detection and diagnostic problems
- networks with a persistence property - a very efficient general
inference algorithm exists. In the second part of the talk, I will
describe this algorithm inspired by incident detection and other
applications. 

Biography:

Tomas has recently graduated from University of Pittsburgh and joined
Boeing Research and Technology. His research interests in machine
learning are inference and learning in Bayesian networks and scaling up
learning technology to large real-world systems. He is also interested
in anomaly detection and planning. He published his work in JMLR, UAI,
AAAI and several other venues. 

 

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