Deep learning (CNN) features
Deep learning features / convolutional neural network features are used in classification based on neural networks (deep learning models).
Convolutional neural networks > Number of sample patches
Project features > Deep learning (CNN) > Convolutional neural networks > [Number of sample patches]Feature that calculates the number of existing sample patches for a class.
Editable Parameters
- Sample folder: Select an existing sample folder path.
- Class: Select the class(es) to calculate the number of sample patches.
Convolutional neural networks > Convolutional neural network model info
Project features > Deep learning (CNN) > Convolutional neural networks > Convolutional neural network model infoThis feature returns the current settings of the convolutional neural network model (deep learning model). Right-click the feature in the feature view and select Display in Image Object Information.
The following parameters are displayed for eCognition model:
- Number of layers including hidden layers
- Kernel size for each hidden layer
- Number of feature maps for each hidden layer
- Pooling - max pooling set to yes or no for each hidden layer
- Sample size [Sample patch size x Sample patch size x Number of image layers]
- Classes - output feature class of the image
for SavedModel:
- Input tensor information (name, shape, type)
- Output tensor information (name, shape, type)
Learn more:
Convolutional Neural Networks - Deep Learning Tutorial
Convolutional Neural Networks - Deep Learning Classification (User Guide)
Convolutional Neural Networks - Deep Learning Algorithms (Reference Book)
eCognition tv - Deep Learning webinars and more on our website