Machine Learning Glossary: Difference between revisions

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Machine Learning, Computer Vision, and Computer Graphics Glossary
Machine Learning, Computer Vision, and Computer Graphics Glossary


==C==
* [[Convolutional neural network]] or CNN - A neural network architecture for image data, or other data on a regular grid.
==D==
* Dilation - how spread out a CNN kernel is. See [[Convolutional neural network]].
==F==
* Fully connected network - The standard neural network model where each layer is a sequence of nodes.
==G==
* Graph Neural Network
==I==
* Intersection over Union - A metric for computing the accuracy of bounding box prediction.
==M==
* Multilayer perceptron - See Fully connected network.


==N==
==N==
* Normalized Device Coordinates - In images, pixels are in coordinates of <math>[-1, 1]\times[-1, 1] </math>.
* Normalized Device Coordinates - In images, pixels are in coordinates of <math>[-1, 1]\times[-1, 1] </math>.
==S==
* Stride - how far the CNN kernel in terms of input pixels moves between output pixels.
==T==
* [[Transformer (machine learning model)]] - A neural network architecture for sequence data.

Revision as of 22:08, 23 June 2021

Machine Learning, Computer Vision, and Computer Graphics Glossary

C

D

F

  • Fully connected network - The standard neural network model where each layer is a sequence of nodes.

G

  • Graph Neural Network

I

  • Intersection over Union - A metric for computing the accuracy of bounding box prediction.

M

  • Multilayer perceptron - See Fully connected network.

N

  • Normalized Device Coordinates - In images, pixels are in coordinates of \(\displaystyle [-1, 1]\times[-1, 1] \).

S

  • Stride - how far the CNN kernel in terms of input pixels moves between output pixels.

T