isht7 / pytorch-deeplab-resnet

DeepLab resnet v2 model in pytorch
MIT License
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computer-vision deep-learning deeplab deeplab-resnet pascal-voc pytorch semantic-segmentation

pytorch-deeplab-resnet

This repository contains code for the deepLab-ResNet architecture used in my paper "SketchParse: Towards rich descriptions for poorly drawn sketches using multi-task hierarchical deep networks" published at ACM MM 2017. This architecture calculates losses on input images over multiple scales ( 1x, 0.75x, 0.5x ). Losses are calculated individually over these 3 scales. In addition to these 3 losses, one more loss is calculated after merging the output score maps on the 3 scales. These 4 losses are added to calculate the total loss.

Updates

24 June 2017

Usage

Note that this repository has been tested with python 2.7 only.

Training

Step 1: Convert init.caffemodel to a .pth file: init.caffemodel contains MS COCO trained weights. We use these weights as initilization for all but the final layer of our model. For the last layer, we use random gaussian with a standard deviation of 0.01 as the initialization. To convert init.caffemodel to a .pth file, run (or download the converted .pth here)

python init_net_surgery.py

To run init_net_surgery .py, deeplab v2 caffe and pytorch (python 2.7) are required.

Step 2: Now that we have our initialization, we can train deeplab-resnet by running,

python train.py

To get a description of each command-line arguments, run

python train.py -h

To run train.py, pytorch (python 2.7) is required.

By default, snapshots are saved in every 1000 iterations in the data/snapshots. The following features have been implemented in this repository -

When run on a Nvidia Titan X GPU, train.py occupies about 11.9 GB of memory.

Evaluation

Evaluation of the saved models can be done by running

python evalpyt.py

To get a description of each command-line arguments, run

python evalpyt.py -h

Results

When trained on VOC augmented training set (with 10582 images) using MS COCO pretrained initialization in pytorch, we get a validation performance of 72.40%(evalpyt2.py, on VOC). The corresponding .pth file can be downloaded here. This is in comparision to 75.54% that is acheived by using train_iter_20000.caffemodel released by authors, which can be replicated by running this file . The .pth model converted from .caffemodel using the first section also gives 75.54% mean IOU. A previous version of this file reported mean IOU of 78.48% on the pytorch trained model which is caclulated in a different way (evalpyt.py, Mean IOU is calculated for each image and these values are averaged together. This way of calculating mean IOU is different than the one used by authors).

To replicate this performance, run

train.py --lr 0.00025 --wtDecay 0.0005 --maxIter 20000 --GTpath <train gt images path here> --IMpath <train images path here> --LISTpath data/list/train_aug.txt

Dataset

The model presented in the results section was trained using the augmented VOC train set which was released by this paper. You may download this augmented data directly from here.

Note that this code can be used to train pytorch-deeplab-resnet model for other datasets also.

Acknowledgement

A part of the code has been borrowed from https://github.com/ry/tensorflow-resnet.