Learning, Moving, and Predicting with Global Motion Representations
tarafından
 
Jaegle, Andrew, author.

Başlık
Learning, Moving, and Predicting with Global Motion Representations

Yazar
Jaegle, Andrew, author.

ISBN
9780438037113

Yazar Ek Girişi
Jaegle, Andrew, author.

Fiziksel Tanımlama
1 electronic resource (135 pages)

Genel Not
Source: Dissertation Abstracts International, Volume: 79-10(E), Section: B.
 
Advisors: Kostas Daniilidis Committee members: Johannes Burge; Diego Contreras; Katerina Fragkiadaki; Nicole Rust; Jianbo Shi.

Özet
In order to effectively respond to and influence the world they inhabit, animals and other intelligent agents must understand and predict the state of the world and its dynamics. An agent that can characterize how the world moves is better equipped to engage it. Current methods of motion computation rely on local representations of motion (such as optical flow) or simple, rigid global representations (such as camera motion). These methods are useful, but they are difficult to estimate reliably and limited in their applicability to real-world settings, where agents frequently must reason about complex, highly nonrigid motion over long time horizons. In this dissertation, I present methods developed with the goal of building more flexible and powerful notions of motion needed by agents facing the challenges of a dynamic, nonrigid world. This work is organized around a view of motion as a global phenomenon that is not adequately addressed by local or low-level descriptions, but that is best understood when analyzed at the level of whole images and scenes. I develop methods to: (i) robustly estimate camera motion from noisy optical flow estimates by exploiting the global, statistical relationship between the optical flow field and camera motion under projective geometry; (ii) learn representations of visual motion directly from unlabeled image sequences using learning rules derived from a formulation of image transformation in terms of its group properties; (iii) predict future frames of a video by learning a joint representation of the instantaneous state of the visual world and its motion, using a view of motion as transformations of world state. I situate this work in the broader context of ongoing computational and biological investigations into the problem of estimating motion for intelligent perception and action.

Notlar
School code: 0175

Konu Başlığı
Neurosciences.
 
Computer science.
 
Artificial intelligence.

Tüzel Kişi Ek Girişi
University of Pennsylvania. Neuroscience.

Elektronik Erişim
http://gateway.proquest.com/openurl?url_ver=Z39.88-2004&rft_val_fmt=info:ofi/fmt:kev:mtx:dissertation&res_dat=xri:pqm&rft_dat=xri:pqdiss:10808343


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