Awesome
Fully Connected DenseNets for Semantic Segmentation
Fully Connected DenseNet for Image Segmentation implementation of the paper The One Hundred Layers Tiramisu : Fully Convolutional DenseNets for Semantic Segmentation
Differences
- Use of SubPixelConvolution instead of Deconvolution as default method for Upsampling.
Usage :
Simply import the densenet_fc.py
script and call the create method:
import densenet_fc as dc
model = DenseNetFCN((32, 32, 3), nb_dense_block=5, growth_rate=16,
nb_layers_per_block=4, upsampling_type='upsampling', classes=1)
Requirements
Keras 1.2.2 Theano (master branch) / Tensorflow 1.0+ h5py