ResNet152v2
This model is a neural network for image classification that take images as input and classify the major object in the image into a set of 1000 different classes (labels are available via org.jetbrains.kotlinx.dl.api.core.util.loadImageNetClassLabels method).
This model has 152 layers with ResNetv2 architecture.
The model have
an input with the shape (1x224x224x3)
an output with the shape (1x1000)
NOTE: ResNet v2 uses pre-activation function whereas ResNet v1 uses post-activation for the residual blocks.
NOTE: This model is converted from Keras.applications, the last few layers in the noTop model have been removed so that the user can fine-tune the model for his specific task.
See also
Constructors
Functions
Common preprocessing function for the Neural Networks trained on ImageNet and whose weights are available with the keras.application.
Returns the specially prepared pre-trained model of the type U.