Theses

Year: 2018

Mukovskiy, A. (2018). Computational Methods for Cognitive and Cooperative Robotics. Phd Thesis.
Computational Methods for Cognitive and Cooperative Robotics
Research Areas: Uncategorized
Type of Publication: Phd Thesis
Full text: Online version

Year: 2011

Roether, C. L. (2011). The Expression of Emotions through Full-body Movement: Features and Asymmetry. Phd Thesis.
The Expression of Emotions through Full-body Movement: Features and Asymmetry
Authors: Roether, C. L.
Research Areas: Uncategorized
Type of Publication: Phd Thesis
Full text: PDF

Year: 2010

Omlor, L. (2010). New methods for anechoic demixing with application to shift invariant feature extraction. Phd Thesis.
New methods for anechoic demixing with application to shift invariant feature extraction
Authors: Omlor, Lars
Research Areas: Uncategorized
Type of Publication: Phd Thesis

Year: 2007

Giese, M. A. (2007). Learnimng-based representations of complex body movements: Studies in brains and machines. Phd Thesis.
Learnimng-based representations of complex body movements: Studies in brains and machines
Authors: Giese, Martin A.
Research Areas: Uncategorized
Type of Publication: Phd Thesis
Full text: Online version

Year: 2006

Endres, D. (2006). Bayesian and Information-Theoretic Tools for Neuroscience. Phd Thesis, School of Psychology, University of St. Andrews, U.K..
Bayesian and Information-Theoretic Tools for Neuroscience
Abstract:

he overarching purpose of the studies presented in this report is the exploration of the uses of information theory and Bayesian inference applied to neural codes. Two approaches were taken: Starting from first principles, a coding mechanism is proposed, the results are compared to a biological neural code. Secondly, tools from information theory are used to measure the information contained in a biological neural code. Chapter 3: The REC model proposed by Harpur and Prager codes inputs into a sparse, factorial representation, maintaining reconstruction accuracy. Here I propose a modification of the REC model to determine the optimal network dimensionality. The resulting code for unfiltered natural images is accurate, highly sparse and a large fraction of the code elements show localized features. Furthermore, I propose an activation algorithm for the network that is faster and more accurate than a gradient descent based activation method. Moreover, it is demonstrated that asymmetric noise promotes sparseness. Chapter 4: A fast, exact alternative to Bayesian classification is introduced. Computational time is quadratic in both the number of observed data points and the number of degrees of freedom of the underlying model. As an example application, responses of single neurons from high-level visual cortex (area STSa) to rapid sequences of complex visual stimuli are analyzed. Chapter 5: I present an exact Bayesian treatment of a simple, yet sufficiently general probability distribution model. The model complexity, exact values of the expectations of entropies and their variances can be computed with polynomial effort given the data. The expectation of the mutual information becomes thus available, too, and a strict upper bound on its variance. The resulting algorithm is first tested on artificial data. To that end, an information theoretic similarity measure is derived. Second, the algorithm is demonstrated to be useful in neuroscience by studying the information content of the neural responses analyzed in the previous chapter. It is shown that the information throughput of STS neurons is maximized for stimulus durations of approx. 60ms.

Authors: Endres, Dominik
Research Areas: Uncategorized
Type of Publication: Phd Thesis
Full text: Online version

Year: 2002

Giese, M. A. & Poggio, T. A. (2002). Biologically Plausible Neural Model for the Recognition of Biological Motion and Actions. Phd Thesis.
Biologically Plausible Neural Model for the Recognition of Biological Motion and Actions
Authors: Giese, Martin A.; Poggio, Tomaso A.
Research Areas: Uncategorized
Type of Publication: Phd Thesis
Giese, M. A. & Xie, X. (2002). Exact solution of the nonlinear dynamics of recurrent neural mechanisms for direction selectivity. Phd Thesis.
Exact solution of the nonlinear dynamics of recurrent neural mechanisms for direction selectivity
Authors: Giese, Martin A.; Xie, X.
Research Areas: Uncategorized
Type of Publication: Phd Thesis
Full text: Online version

Year: 2001

Yu, A. J., Poggio, T. A. & Giese, M. A. (2001). Biologically plausible neural circuits for realization of maximum operations. Phd Thesis.
Biologically plausible neural circuits for realization of maximum operations
Authors: Yu, Angela J. Poggio, Tomaso A. Giese, Martin A.
Research Areas: Uncategorized
Type of Publication: Phd Thesis
Full text: Online version

Year: 1998

Giese, M. A. (1998). A Dynamic Neural Field Model for the Perception of Apparent Motion. Phd Thesis.
A Dynamic Neural Field Model for the Perception of Apparent Motion
Authors: Giese, Martin A.
Research Areas: Uncategorized
Type of Publication: Phd Thesis
Full text: Online version

Year: 1993

Giese, M. A. (1993). Diploma Thesis: Dynamik der viso-motorischen Koordination beim Moving-Room-Paradigma (Original). Phd Thesis.
Diploma Thesis: Dynamik der viso-motorischen Koordination beim Moving-Room-Paradigma (Original)
Authors: Giese, Martin A.
Research Areas: Uncategorized
Type of Publication: Phd Thesis
Full text: Online version

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