VS298: Natural Scene Statistics: Difference between revisions
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| March 31 | | March 31 | ||
| '''Energy-based models''' <br /> | | '''Energy-based models''' <br /> | ||
* Hinton: Product of experts models [https://www.dropbox.com/s/iow62b9nqbbxftw/hinton-poe-nc02.pdf paper] <br /> | * Hinton: Product of experts models, [https://www.dropbox.com/s/iow62b9nqbbxftw/hinton-poe-nc02.pdf paper] <br /> | ||
* Osindero & Hinton: Product of Experts model of natural images, [https://www.dropbox.com/s/rkl97yw1ryvosya/osindero-welling-hinton06.pdf paper]<br /> | * Osindero & Hinton: Product of Experts model of natural images, [https://www.dropbox.com/s/rkl97yw1ryvosya/osindero-welling-hinton06.pdf paper]<br /> | ||
* Roth & Black: Fields of experts, [https://www.dropbox.com/s/w6lhf9li8tsexnm/roth-black05.pdf paper] <br /> | * Roth & Black: Fields of experts, [https://www.dropbox.com/s/w6lhf9li8tsexnm/roth-black05.pdf paper] <br /> | ||
Additional reading: | Additional reading: | ||
* Hinton: Practical guide to training RBMs [https://www.dropbox.com/s/8kxbkrmay5h9abf/hinton-rbm-guideTR.pdf paper] <br /> | * Hinton: Practical guide to training RBMs [https://www.dropbox.com/s/8kxbkrmay5h9abf/hinton-rbm-guideTR.pdf paper] <br /> | ||
* Teh et al: Energy-based models for sparse overcomplete representation, [https://www.dropbox.com/s/ph17gczh2l1e9qa/teh-etal-jmlr03.pdf paper] | * Teh et al: Energy-based models for sparse overcomplete representation, [https://www.dropbox.com/s/ph17gczh2l1e9qa/teh-etal-jmlr03.pdf paper]<br /> | ||
* Zhu, Wu & Mumford: FRAME (Filters, random fields, and maximum entropy), [https://www.dropbox.com/s/fxcc1gx1vfz1mwo/zhu-wu-mumford-FRAME.pdf paper] | |||
| <br /> | | <br /> | ||
Evan Shelhamer<br /> | Evan Shelhamer<br /> | ||
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| April 7 | | April 7 | ||
| '''Learning invariances through 'slow feature analysis'''' <br /> | | '''Learning invariances through 'slow feature analysis'''' <br /> | ||
* Foldiak/Wiskott: slow feature analysis <br /> | * Foldiak/Wiskott: slow feature analysis, [https://www.dropbox.com/s/ce4ngfyop94whhj/foldiak91.pdf paper1], [https://www.dropbox.com/s/v3dgj50jp6sc26p/wiskott-sejnowski02.pdf paper2]<br /> | ||
* Hyvarinen: 'Bubbles' <br /> | * Hyvarinen: 'Bubbles' [https://www.dropbox.com/s/1u7cmflubvt0zfy/hyvarinen-bubbles03.pdf paper]<br /> | ||
* Berkes et al.: factorizing 'what' and 'where' from video | * Berkes et al.: factorizing 'what' and 'where' from video, [https://www.dropbox.com/s/us4fmd6vphacc4x/berkes-etal09.pdf paper] | ||
| <br /> | | <br /> | ||
Guy Isely<br /> | Guy Isely<br /> | ||
Chayut Thanapirom<br /> | Chayut Thanapirom<br /> | ||
Bharath Hariharan | |||
|- | |- | ||
| April 14 | | April 14 | ||
| '''Manifold and Lie group models''' <br /> | | '''Manifold and Lie group models''' <br /> | ||
* Carlsson: Klein bottle model of natural images | * Carlsson et al.: Klein bottle model of natural images, [https://www.dropbox.com/s/egaeuqpr7spuaaq/carlsson-etal07.pdf paper] | ||
* Culpepper & Olshausen: Learning manifold transport operators | * Culpepper & Olshausen: Learning manifold transport operators, [https://www.dropbox.com/s/1yqnpg7mfodfd8y/culpepper-olshausen09.pdf paper] | ||
* Roweis & Saul: Local Linear Embedding | * Roweis & Saul: Local Linear Embedding, [https://www.dropbox.com/s/xbslejj4jl7723q/roweis-saul00.pdf paper] | ||
| <br /> | | <br /> | ||
Yubei Chen<br /> | |||
Bruno/Mayur<br /> | |||
James Arnemann | James Arnemann | ||
|- | |- | ||
| April 21 | | April 21 | ||
| '''Hierarchical models''' <br /> | | '''Hierarchical models''' <br /> | ||
* Karklin & Lewicki (2003): density components <br /> | * Karklin & Lewicki (2003): density components, [https://www.dropbox.com/s/urjwi875vhtmyww/karklin-lewicki03.pdf paper] <br /> | ||
* Shan & Cottrell: stacked ICA <br /> | * Shan & Cottrell: stacked ICA, [https://www.dropbox.com/s/vit1tyjsz75jalf/shan-cottrell07.pdf paper] <br /> | ||
* Cadieu & Olshausen (2012): learning intermediate representations of form and motion | * Cadieu & Olshausen (2012): learning intermediate representations of form and motion, [https://www.dropbox.com/s/p0bsnjxq3v6rs0x/cadieu-olshausen12.pdf paper] | ||
| | | <br /> | ||
Tyler Lee<br /> | |||
Brian Cheung<br /> | |||
Dylan Paiton | |||
|- | |- | ||
| April 28 | | April 28 | ||
| '''Deep network models''' <br /> | | '''Deep network models''' <br /> | ||
* Hinton & Salakhudinov (2006): stacked RBMs <br /> | * Hinton & Salakhudinov (2006): stacked RBMs, [https://www.dropbox.com/s/bjtfiiu44skwuzl/hinton-salakutdinov06.pdf paper] <br /> | ||
* Le et al. (2011): Unsupervised learning (Google brain, 'cat' neurons) <br /> | * Le et al. (2011): Unsupervised learning (Google brain, 'cat' neurons), [https://www.dropbox.com/s/ydd91bhv0qj69rr/le-etal12.pdf paper] <br /> | ||
* Krishevsky et al. (2012): Supervised learning, ImageNet 1000 [http://books.nips.cc/papers/files/nips25/NIPS2012_0534.pdf | * Krishevsky et al. (2012): Supervised learning, ImageNet 1000 [http://books.nips.cc/papers/files/nips25/NIPS2012_0534.pdf paper] | ||
| <br /> | | <br /> | ||
TBD <br /> | TBD <br /> | ||
TBD <br /> | TBD <br /> | ||
[mailto:abbasi@berkeley.edu Reza Abbasi-Asl | [mailto:abbasi@berkeley.edu Reza Abbasi-Asl] | ||
|- | |- | ||
| May | | May 6 <br /> | ||
Note: Tuesday | |||
| '''Special topics''' <br /> | | '''Special topics''' <br /> | ||
* Image compression with Hopfield networks<br /> | * Fergus (2013): visualizing what deep nets learn [http://arxiv.org/abs/1311.2901 paper]<br /> | ||
* Schmidhuber: deep nets ([http://arxiv.org/pdf/1312.5548.pdf paper]), focusing on LOCOCODE ([http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.51.1412 paper]) | |||
* Image compression with Hopfield networks <br /> | |||
| <br /> | | <br /> | ||
[mailto:shiry@berkeley.edu Shiry Ginosar]<br /> | |||
Anthony DiFranco<br /> | |||
Chris Hillar | Chris Hillar | ||
|- | |- |
Latest revision as of 20:27, 25 May 2014
This seminar will examine what is known about the statistical structure of natural visual and auditory scenes, and theories of how sensory coding strategies have been adapted to this structure.
Instructor: Bruno Olshausen
Enrollment information:
VS 298 (section 4), 2 units
CCN: 66489
Meeting time and place:
Monday 6-8, Evans 560
Email list:
nss2014@lists.berkeley.edu subscribe
Readings:
Books and review articles:
- Natural Image Statistics by Hyvarinen, Hurri & Hoyer
- Olshausen BA & Lewicki MS (2013) What natural scene statistics can tell us about cortical representation. In: The Cognitive Neurosciences V. paper
- Geisler WS (2008) Visual perception and the statistical properties of natural scenes. Annual Review of Psychology paper
Weekly schedule:
Date | Topic/Reading | Presenter |
---|---|---|
Feb. 3 | Redundancy reduction, whitening, and power spectrum of natural images
Additional reading:
|
Anthony DiFranco |
Feb. 10 | Whitening in time and color; Robust coding
Additional reading: |
Chayut Thanapirom |
Feb. 17 | ** Holiday ** | |
Feb. 24 | Higher-order statistics and sensory coding
Additional reading: |
Karl Zipser |
March 3 | ICA and sparse coding of natural images
Additional reading:
|
Mayur Mudigonda |
March 11 **Tuesday** | Statistics of natural sound and auditory coding |
Tyler Lee |
March 17 | Higher-order group structure
Additional reading:
|
Chayut Thanapirom |
March 24 | ** Spring recess ** | |
March 31 | Energy-based models
Additional reading: |
Evan Shelhamer |
April 7 | Learning invariances through 'slow feature analysis' |
Guy Isely |
April 14 | Manifold and Lie group models |
Yubei Chen |
April 21 | Hierarchical models |
Tyler Lee |
April 28 | Deep network models |
TBD |
May 6 Note: Tuesday |
Special topics |
Shiry Ginosar |
May 12 | Special topics |