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Yali Amit

Researcher at University of Chicago

Publications -  67
Citations -  3898

Yali Amit is an academic researcher from University of Chicago. The author has contributed to research in topics: Statistical model & Hebbian theory. The author has an hindex of 23, co-authored 66 publications receiving 3539 citations. Previous affiliations of Yali Amit include Hebrew University of Jerusalem.

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Shape quantization and recognition with randomized trees

TL;DR: A new approach to shape recognition based on a virtually infinite family of binary features (queries) of the image data, designed to accommodate prior information about shape invariance and regularity, and a comparison with artificial neural networks methods is presented.
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Towards a coherent statistical framework for dense deformable template estimation

TL;DR: A rigorous Bayesian framework is proposed for which it is proved asymptotic consistency of the maximum a posteriori estimate and which leads to an effective iterative estimation algorithm of the geometric and photometric parameters in the small sample setting.
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Single-unit stability using chronically implanted multielectrode arrays.

TL;DR: A criterion to assess single-unit stability by measuring the similarity of average spike waveforms and interspike interval histograms is developed and it is demonstrated that this method can be used to track neurons across days, even during adaptation to a visuomotor rotation.
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Joint induction of shape features and tree classifiers

TL;DR: A very large family of binary features for two-dimensional shapes determined by inductive learning during the construction of classification trees is introduced, which makes it possible to narrow the search for informative ones at each node of the tree.
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A computational model for visual selection

TL;DR: The model was not conceived to explain brain functions, but it does cohere with evidence about the functions of neurons in V1 and V2, such as responses to coarse or incomplete patterns and to scale and translation invariance in IT.