Faster RCNN with PyTorch
Note: I re-implemented faster rcnn in this project when I started learning PyTorch. Then I use PyTorch in all of my projects. I still remember it costed one week for me to figure out how to build cuda code as a pytorch layer :). But actually this is not a good implementation and I didn't achieve the same mIOU as the original caffe code.
This project is no longer maintained. So I suggest: - You can still read and study this code if you want to re-implement faster rcnn by yourself; - You can use the better PyTorch implementation by ruotianluo if you want to train faster rcnn with your own data;
This is a PyTorch implementation of Faster RCNN. This project is mainly based on py-faster-rcnn and TFFRCNN.
For details about R-CNN please refer to the paper Faster R-CNN: Towards Real-Time Object Detection with Region Proposal Networks by Shaoqing Ren, Kaiming He, Ross Girshick, Jian Sun.
Progress
[x] Forward for detecting
[x] RoI Pooling layer with C extensions on CPU (only forward)
[x] RoI Pooling layer on GPU (forward and backward)
[x] Training on VOC2007
[x] TensroBoard support
[x] Evaluation
Installation and demo
Install the requirements (you can use pip or Anaconda):
conda install pip pyyaml sympy h5py cython numpy scipy
conda install -c menpo opencv3
pip install easydict
Clone the Faster R-CNN repository
git clone git@github.com:longcw/faster_rcnn_pytorch.git
Build the Cython modules for nms and the roi_pooling layer
cd faster_rcnn_pytorch/faster_rcnn
./make.sh
Download the trained model VGGnet_fast_rcnn_iter_70000.h5 and set the model path in demo.py
Run demo python demo.py
Training on Pascal VOC 2007
Follow this project (TFFRCNN) to download and prepare the training, validation, test data and the VGG16 model pre-trained on ImageNet.
Since the program loading the data in faster_rcnn_pytorch/data
by default, you can set the data path as following.
cd faster_rcnn_pytorch
mkdir datacd data
ln -s $VOCdevkit VOCdevkit2007
Then you can set some hyper-parameters in train.py
and training parameters in the .yml
file.
Now I got a 0.661 mAP on VOC07 while the origin paper got a 0.699 mAP. You may need to tune the loss function defined in faster_rcnn/faster_rcnn.py
by yourself.
Training with TensorBoard
With the aid of Crayon, we can access the visualisation power of TensorBoard for any deep learning framework.
To use the TensorBoard, install Crayon (https://github.com/torrvision/crayon) and set use_tensorboard = True
in faster_rcnn/train.py
.
Evaluation
Set the path of the trained model in test.py
.
cd faster_rcnn_pytorch
mkdir output
python test.py
License: MIT license (MIT)