A common feature of many approaches to modeling sensory statistics is an emphasis on capturing the "average." From early representations in the brain, to highly abstracted class categories in machine learning for classification tasks, central-tendency models based on the Gaussian distribution are a seemingly natural and obvious choice for modeling sensory data. However, insights from neuroscience, psychology, and computer vision suggest an alternate strategy: preferentially focusing representational resources on the extremes of the distribution of sensory inputs. The notion of treating extrema near a decision boundary.
Extreme Value Theory-Based Methods for Visual Recognition (Synthesis Lectures on Computer Vision) ipod
Extreme Value Theory-Based Methods for Visual Recognition (Synthesis Lectures on Computer Vision) pdf free download
Extreme Value Theory-Based Methods for Visual Recognition (Synthesis Lectures on Computer Vision) ebook
Tuesday, December 11, 2018
Download Extreme Value Theory-Based Methods for Visual Recognition (Synthesis Lectures on Computer Vision) by Walter J. Scheirer pdf
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