Tools | Bookmark & Share | Make MrWhy My Homepage
MrWhy.com
Go
MrWhy.com » Videos » Compressed Sensing and Bayesian Experimental Design
Compressed Sensing and Bayesian Experimental Design
Compressed Sensing and Bayesian Experimental Design
Report
Compressed Sensing and Bayesian Experimental Design
We relate compressed sensing (CS) with Bayesian experimental design and provide a novel efficient approximate method for the latter, based on expectation propagation. In a large comparative study about linearly measuring natural images, we show that the simple standard heuristic of measuring Wavelet coefficients top-down systematically outperforms CS methods using random measurements; the sequential projection optimisation approach of [Ji & Carin 2007] performs even worse. We also show that our own approximate Bayesian method is able to learn measurement filters on full images efficiently which outperform the Wavelet heuristic. To our knowledge, ours is the first successful attempt at {}"learning compressed sensing" for images of realistic size. In contrast to common CS methods, our framework is not restricted to sparse signals, but can readily be applied to other notions of signal complexity or noise models. We give concrete ideas how our method can be scaled up to large signal representations.
Channel: VideoLectures
Category: Educational
Video Length: 0
Date Found: October 13, 2010
Date Produced: August 29, 2008
View Count: 0
 
MrWhy.com Special Offers
1
2
3
4
5
 
About Us: About MrWhy.com | Advertise on MrWhy.com | Contact MrWhy.com | Privacy Policy | MrWhy.com Partners
Answers: Questions and Answers | Browse by Category
Comparison Shopping: Comparison Shopping | Browse by Category | Top Searches
Shop eBay: Shop eBay | Browse by Category
Shop Amazon: Shop Amazon | Browse by Category
Videos: Video Search | Browse by Category
Web Search: Web Search | Browse by Searches
Copyright © 2011 MrWhy.com. All rights reserved.