The technology we use, and even rely on, in our everyday lives –computers, radios, video, cell phones – is enabled by signal processing. Learn More »
1. IEEE Signal Processing Magazine
2. Signal Processing Digital Library*
3. Inside Signal Processing Newsletter
4. SPS Resource Center
5. Career advancement & recognition
6. Discounts on conferences and publications
7. Professional networking
8. Communities for students, young professionals, and women
9. Volunteer opportunities
10. Coming soon! PDH/CEU credits
Click here to learn more.
News and Resources for Members of the IEEE Signal Processing Society
Simek, Kyle LouisView Profile. (The University of Arizona), “Branching Gaussian process models for computer vision” (2016) Advisor: Jacobus Kobus Barnard
Bayesian methods provide a principled approach to some of the hardest problems in computer vision—low signal-to-noise ratios, ill-posed problems, and problems with missing data. This dissertation applies Bayesian modeling to infer multidimensional continuous manifolds (e.g., curves, surfaces) from image data using Gaussian process priors. Gaussian processes are ideal priors in this setting, providing a stochastic model over continuous functions while permitting efficient inference.
The authors begin by introducing a formal mathematical representation of branch curvilinear structures called a curve tree and the authors define a novel family of Gaussian processes over curve trees called branching Gaussian processes. The authors define two types of branching Gaussian properties and show how to extend them to branching surfaces and hypersurfaces. The authors then apply Gaussian processes in three computer vision applications. First, the authors perform 3D reconstruction of moving plants from 2D images. Using a branching Gaussian process prior, the authors recover high quality 3D trees while being robust to plant motion and camera calibration error. Second, the authors perform multi-part segmentation of plant leaves from highly occluded silhouettes using a novel Gaussian process model for stochastic shape. The proposed method obtains good segmentations despite highly ambiguous shape evidence and minimal training data. Finally, the authors estimate 2D trees from microscope images of neurons with highly ambiguous branching structure. The authors first fit a tree to a blurred version of the image where structure is less ambiguous. Then they iteratively deform and expand the tree to fit finer images, using a branching Gaussian process regularizing prior for deformation. The proposed method infers natural tree topologies despite ambiguous branching and image data containing loops. This work shows that Gaussian processes can be a powerful building block for modeling complex structure, and they perform well in computer vision problems having significant noise and ambiguity.
Nomination/Position | Deadline |
---|---|
Call for Proposals: 2025 Cycle 1 Seasonal Schools & Member Driven Initiatives in Signal Processing | 17 November 2024 |
Call for Nominations: IEEE Technical Field Awards | 15 January 2025 |
Nominate an IEEE Fellow Today! | 7 February 2025 |
Call for Nominations for IEEE SPS Editors-in-Chief | 10 February 2025 |
Home | Sitemap | Contact | Accessibility | Nondiscrimination Policy | IEEE Ethics Reporting | IEEE Privacy Policy | Terms | Feedback
© Copyright 2024 IEEE - All rights reserved. Use of this website signifies your agreement to the IEEE Terms and Conditions.
A public charity, IEEE is the world's largest technical professional organization dedicated to advancing technology for the benefit of humanity.