Awesome
SegNet-Basic:
What is Segnet?
- Deep Convolutional Encoder-Decoder Architecture for Semantic Pixel-wise Image Segmentation
Segnet = (Encoder + Decoder) + Pixel-Wise Classification layer
SegNet: A Deep Convolutional Encoder-Decoder Architecture for Image Segmentation (Vijay Badrinarayanan, Alex Kendall, Roberto Cipolla, Senior Member, IEEE) arXiv:1511.00561v3
What is SegNet-Basic?
- "In order to analyse SegNet and compare its performance with FCN (decoder variants) we use a smaller version of SegNet, termed SegNet-Basic , which ha 4 encoders and 4 decoders. All the encoders in SegNet-Basic perform max-pooling and subsampling and the corresponding decoders upsample its input using the received max-pooling indices."
Basically it's a mini-segnet to experiment / test the architecure with convnets, such as FCN.
Steps To Run The Model:
-
Run
python model-basic.py
to createsegNet_basic_model
for keras to use.model-basic.py
contains the architecure.
Dataset:
-
In a different directory run this to download the dataset from original Implementation.
git clone git@github.com:alexgkendall/SegNet-Tutorial.git
- copy the
/CamVid
to here, or change theDataPath
indata_loader.py
to the above directory
-
The run
python data_loader.py
to generate these two files:/data/train_data.npz/
and/data/train_label.npz
- This will make it easy to process the model over and over, rather than waiting the data to be loaded into memory.
To Do:
[x] SegNet-Basic
[ ] SegNet
[x] Test Accuracy
[ ] Requirements
Segnet-Basic Road Scene Results:
- Train / Test:
Train on 367 samples, validate on 233 samples
Epoch 101/102
366/367 [============================>.]
- ETA: 0s - loss: 0.3835 - acc: 0.8737Epoch 00000: val_acc improved from -inf to 0.76367, saving model to weights.best.hdf5
367/367 [==============================]
- 231s - loss: 0.3832 - acc: 0.8738 - val_loss: 0.7655 - val_acc: 0.7637
Epoch 102/102
366/367 [============================>.]
- ETA: 0s - loss: 0.3589 - acc: 0.8809Epoch 00001: val_acc did not improve
367/367 [==============================]
- 231s - loss: 0.3586 - acc: 0.8810 - val_loss: 2.4447 - val_acc: 0.4478
-
Evaluation:
acc: 85.47%