University of Florida Eder Santana

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Presentation transcript:

University of Florida Eder Santana Neural Networks University of Florida Eder Santana

Topics Radial Basis Functions Convolutional Neural Networks

Topics Radial Basis Functions Convolutional Neural Networks

Radial basis functions - Topics Inner products RKHS Cover’s Theorem

RBF source: Wikipedia

Convolutional Neural Network Review FIRs 2D convolutions Max-pooling Shift and scale invariance

Convolutional Neural Network Review FIRs source: Wikipedia

Convolutional Neural Network 2D Convolutions source Stanford Tutorial: http://ufldl.stanford.edu/tutorial/supervised/FeatureExtractionUsingConvolution/

Convolutional Neural Network Max-pooling source: Wikipedia

Convolutional Neural Network Shift and scale invariance: https://www.youtube.com/watch?v=FwFduRA_L6Q http://www.clarifai.com/#demo source: Wikipedia

Convolutional Neural Network Shift and scale invariance: source: AlexNet

Convolutional Neural Network source: AlexNet

Convolutional Neural Network Shift and scale invariance: Can you think of other symmetries that might be useful for machine learning? source: AlexNet