/simple-faster-rcnn-pytorch

A simplified implemention of Faster R-CNN that replicate performance from origin paper

Primary LanguageJupyter NotebookOtherNOASSERTION

A Simple and Fast Implementation of Faster R-CNN

1. Introduction

This project is a Simplified Faster R-CNN implementation based on chainercv and other projects . It aims to:

  • Simplify the code (Simple is better than complex)
  • Make the code more straightforward (Flat is better than nested)
  • Match the performance reported in origin paper (Speed Counts and mAP Matters)

And it has the following features:

  • It can be run as pure Python code, no more build affair. (cuda code moves to cupy, Cython acceleration are optional)
  • It's a minimal implemention in around 2000 lines valid code with a lot of comment and instruction.(thanks to chainercv's excellent documentation)
  • It achieves higher mAP than the origin implementation (0.712 VS 0.699)
  • It achieve speed compariable with other implementation (6fps and 14fps for train and test in TITAN XP with cython)
  • It's memory-efficient (about 3GB for vgg16)

img

2. Performance

2.1 mAP

VGG16 train on trainval and test on test split.

Note: the training shows great randomness, you may need a bit of luck and more epoches of training to reach the highest mAP. However, it should be easy to surpass the lower bound.

Implementation mAP
origin paper 0.699
train with caffe pretrained model 0.700-0.712
train with torchvision pretrained model 0.685-0.701
model converted from chainercv (reported 0.706) 0.7053

2.2 Speed

Implementation GPU Inference Trainining
origin paper K40 5 fps NA
This[1] TITAN Xp 14-15 fps 6 fps
pytorch-faster-rcnn TITAN Xp 15-17fps 6fps

[1]: make sure you install cupy correctly and only one program run on the GPU. The training speed is sensitive to your gpu status. see troubleshooting for more info. Morever it's slow in the start of the program.

It could be faster by removing visualization, logging, averaging loss etc.

3. Install dependencies

requires python3 and PyTorch 0.3

  • install PyTorch >=0.3 with GPU (code are GPU-only), refer to official website

  • install cupy, you can install via pip install but it's better to read the docs and make sure the environ is correctly set

  • install other dependencies: pip install -r requirements.txt

  • Optional, but strongly recommended: build cython code nms_gpu_post:

    cd model/utils/nms/
    python3 build.py build_ext --inplace
  • start vidom for visualization

nohup python3 -m visdom.server &

4. Demo

Download pretrained model from Google Drive or Baidu Netdisk( passwd: scxn)

See demo.ipynb for more detail.

5. Train

5.1 Prepare data

Pascal VOC2007

  1. Download the training, validation, test data and VOCdevkit

    wget http://host.robots.ox.ac.uk/pascal/VOC/voc2007/VOCtrainval_06-Nov-2007.tar
    wget http://host.robots.ox.ac.uk/pascal/VOC/voc2007/VOCtest_06-Nov-2007.tar
    wget http://host.robots.ox.ac.uk/pascal/VOC/voc2007/VOCdevkit_08-Jun-2007.tar
  2. Extract all of these tars into one directory named VOCdevkit

    tar xvf VOCtrainval_06-Nov-2007.tar
    tar xvf VOCtest_06-Nov-2007.tar
    tar xvf VOCdevkit_08-Jun-2007.tar
  3. It should have this basic structure

    $VOCdevkit/                           # development kit
    $VOCdevkit/VOCcode/                   # VOC utility code
    $VOCdevkit/VOC2007                    # image sets, annotations, etc.
    # ... and several other directories ...
  4. modify voc_data_dir cfg item in utils/config.py, or pass it to program using argument like --voc-data-dir=/path/to/VOCdevkit/VOC2007/ .

COCO

TBD

5.2 Prepare caffe-pretrained vgg16

If you want to use caffe-pretrain model as initial weight, you can run below to get vgg16 weights converted from caffe, which is the same as the origin paper use.

python misc/convert_caffe_pretrain.py

This scripts would download pretrained model and converted it to the format compatible with torchvision.

Then you should specify where caffe-pretraind model vgg16_caffe.pth stored in utils/config.py by setting caffe_pretrain_path

If you want to use pretrained model from torchvision, you may skip this step.

NOTE, caffe pretrained model has shown slight better performance.

NOTE: caffe model require images in BGR 0-255, while torchvision model requires images in RGB and 0-1. See data/dataset.pyfor more detail.

5.3 begin training

mkdir checkpoints/ # folder for snapshots
python3 train.py train --env='fasterrcnn-caffe' --plot-every=100 --caffe-pretrain    

you may refer to utils/config.py for more argument.

Some Key arguments:

  • --caffe-pretrain=False: use pretrain model from caffe or torchvision (Default: torchvison)
  • --plot-every=n: visualize prediction, loss etc every n batches.
  • --env: visdom env for visualization
  • --voc_data_dir: where the VOC data stored
  • --use-drop: use dropout in RoI head, default False
  • --use-Adam: use Adam instead of SGD, default SGD. (You need set a very low lr for Adam)
  • --load-path: pretrained model path, default None, if it's specified, it would be loaded.

you may open browser, visit http://<ip>:8097 and see the visualization of training procedure as below:

visdom

If you're in China and encounter problem with visdom (i.e. timeout, blank screen), you may refer to visdom issue, and see troubleshooting for solution.

Troubleshooting

  • visdom

    Some js files in visdom was blocked in China, see simple solution here

    Also, updata=append doesn't work due to a bug brought in latest version, see issue and fix

    You don't need to build from source, modifying related files would be OK.

  • dataloader: received 0 items of ancdata

    see discussion, It's alreadly fixed in train.py. So I think you are free from this problem.

  • cupy numpy.core._internal.AxisError: axis 1 out of bounds [0, 1)

    bug of cupy, see issue, fix via pull request

    You don't need to build from source, modifying related files would be OK.

  • VGG: Slow in construction

    VGG16 is slow in construction(i.e. 9 seconds),it could be speed up by this PR

    You don't need to build from source, modifying related files would be OK.

  • About the speed

    One strange thing is that, even the code doesn't use chainer, but if I remove from chainer import cuda, the speed drops a lot (train 6.5->6.1,test 14.5->10), because Chainer replaces the default allocator of CuPy by its memory pool implementation. But ever since V4.0, cupy use memory pool as default. However you need to build from souce if you are gona use the latest version of cupy (uninstall cupy -> git clone -> git checkout v4.0 -> setup.py install) @_@

    Another simple fix: add from chainer import cuda at the begining of train.py. in such case,you'll need to pip install chainer first.

More

  • training on coco
  • resnet
  • Maybe;replace cupy with THTensor+cffi?
  • Maybe:Convert all numpy code to tensor?
  • check python2-compatibility

Acknowledgement

This work builds on many excellent works, which include:

^_^

Licensed under MIT, see the LICENSE for more detail.

Contribution Welcome.

If you encounter any problem, feel free to open an issue.

Correct me if anything is wrong or unclear.

model structure img