Location:
AGB seminar room 3rd floor
Date:
Dr. Calum Blair
University of Edinburgh, IDCOM
Identifying Anomalous Objects in SAS Imagery Using Uncertainty
Abstract
Object detection in modalities such as synthetic aperture sonar (SAS) is affected by the difficulty of acquiring a large number of training samples. If object classes not present in the training dataset are detected during testing, they can be mis-classified as one of the training classes. This increases overall false alarm rate and affects operator reliability and trust in the detection algorithm. Previous work showed that classification algorithms are often overconfident in their predictions and hence cannot reliably flag image regions about which the algorithm is uncertain or which need further sampling or processing. This paper describes object detectors based on SVMs and Gaussian Processes for SAS imagery, followed by probabilistic calibration of detector confidence scores. The entropy or uncertainty of these scores is then used to identify low-confidence regions and indicate the presence of previously unseen or anomalous objects.
Biography
Calum Blair is a research fellow at the Institute for Digital communications at the University of Edinburgh. He obtained an EngD in computer vision from Heriot-Watt University. His research interests include anomalous object and event detection and methods for power-efficient, real-time implementations of computer vision and signal processing algorithms on hardware such as GPUs.