DeRPN is a novel region proposal network which concentrates on improving the adaptivity of current detectors. The paper is available here.
· Mar. 13, 2019: The DeRPN pretrained models are added.
· Jan. 25, 2019: The code is released.
Welcome to improve DeRPN together. For any questions, please feel free to contact Lele Xie ([email protected]) or Prof. Jin ([email protected]).
If you find DeRPN useful to your research, please consider citing our paper as follow:
@article{xie2019DeRPN,
title = {DeRPN: Taking a further step toward more general object detection},
author = {Lele Xie, Yuliang Liu, Lianwen Jin*, Zecheng Xie}
joural = {AAAI}
year = {2019}
}
Note: The reimplemented results are slightly different from those presented in the paper for different training settings, but the conclusions are still consistent. For example, this code doesn't use multi-scale training which should boost the results for both DeRPN and RPN.
training data: COCO-Text train
test data: COCO-Text test
network | [email protected] | [email protected] | [email protected] | [email protected] | |
---|---|---|---|---|---|
RPN+Faster R-CNN | VGG16 | 32.48 | 52.54 | 7.40 | 17.59 |
DeRPN+Faster R-CNN | VGG16 | 47.39 | 70.46 | 11.05 | 25.12 |
RPN+R-FCN | ResNet-101 | 37.71 | 54.35 | 13.17 | 22.21 |
DeRPN+R-FCN | ResNet-101 | 48.62 | 71.30 | 13.37 | 27.57 |
training data: VOC 07+12 trainval
test data: VOC 07 test
Inference time is evaluated on one TITAN XP GPU.
network | inference time | [email protected] | [email protected] | AP | |
---|---|---|---|---|---|
RPN+Faster R-CNN | VGG16 | 64 ms | 75.53 | 42.08 | 42.60 |
DeRPN+Faster R-CNN | VGG16 | 65 ms | 76.17 | 44.97 | 43.84 |
RPN+R-FCN | ResNet-101 | 85 ms | 78.87 | 54.30 | 50.04 |
DeRPN+R-FCN (900) * | ResNet-101 | 84 ms | 79.21 | 54.43 | 50.28 |
( "*": On Pascal VOC dataset, we found that it is more suitable to train the DeRPN+R-FCN model with 900 proposals. For other experiments, we use the default proposal number to train the models, i.e., 2000 proposals fro Faster R-CNN, 300 proposals for R-FCN. )
training data: COCO 2017 train
test data: COCO 2017 test/val
test set | network | AP | AP50 | AP75 | APS | APM | APL |
---|---|---|---|---|---|---|---|
RPN+Faster R-CNN | VGG16 | 24.2 | 45.4 | 23.7 | 7.6 | 26.6 | 37.3 |
DeRPN+Faster R-CNN | VGG16 | 25.5 | 47.2 | 25.2 | 10.3 | 27.9 | 36.7 |
RPN+R-FCN | ResNet-101 | 27.7 | 47.9 | 29.0 | 10.1 | 30.2 | 40.1 |
DeRPN+R-FCN | ResNet-101 | 28.4 | 49.0 | 29.5 | 11.1 | 31.7 | 40.5 |
val set | network | AP | AP50 | AP75 | APS | APM | APL |
---|---|---|---|---|---|---|---|
RPN+Faster R-CNN | VGG16 | 24.1 | 45.0 | 23.8 | 7.6 | 27.8 | 37.8 |
DeRPN+Faster R-CNN | VGG16 | 25.5 | 47.3 | 25.0 | 9.9 | 28.8 | 37.8 |
RPN+R-FCN | ResNet-101 | 27.8 | 48.1 | 28.8 | 10.4 | 31.2 | 42.5 |
DeRPN+R-FCN | ResNet-101 | 28.4 | 48.5 | 29.5 | 11.5 | 32.9 | 42.0 |
- Requirements
- Installation
- Preparation for Training & Testing
- Usage
- Cuda 8.0 and cudnn 5.1.
- Some python packages: cython, opencv-python, easydict et. al. Simply install them if your system misses these packages.
- Configure the caffe according to your environment (Caffe installation instructions). As the code requires pycaffe, caffe should be built with python layers. In Makefile.config, make sure to uncomment this line:
WITH_PYTHON_LAYER := 1
- An NVIDIA GPU with more than 6GB is required for ResNet-101.
-
Clone the DeRPN repository
git clone https://github.com/HCIILAB/DeRPN.git
-
Build the Cython modules
cd $DeRPN_ROOT/lib make
-
Build caffe and pycaffe
cd $DeRPN_ROOT/caffe make -j8 && make pycaffe
-
Download the datasets of Pascal VOC 2007 & 2012, MS COCO 2017 and COCO-Text.
-
You need to put these datasets under the $DeRPN_ROOT/data folder (with symlinks).
-
For COCO-Text, the folder structure is as follow:
$DeRPN_ROOT/data/coco_text/images/train2014 $DeRPN_ROOT/data/coco_text/images/val2014 $DeRPN_ROOT/data/coco_text/annotations # train2014, val2014, and annotations are symlinks from /pth_to_coco2014/train2014, # /pth_to_coco2014/val2014 and /pth_to_coco2014/annotations2014/, respectively.
-
For COCO, the folder structure is as follow:
$DeRPN_ROOT/data/coco/images/train2017 $DeRPN_ROOT/data/coco/images/val2017 $DeRPN_ROOT/data/coco/images/test-dev2017 $DeRPN_ROOT/data/coco/annotations # the symlinks are similar to COCO-Text
-
For Pascal VOC, the folder structure is as follow:
$DeRPN_ROOT/data/VOCdevkit2007 $DeRPN_ROOT/data/VOCdevkit2012 #VOCdevkit2007 and VOCdevkit2012 are symlinks from $VOCdevkit whcich contains VOC2007 and VOC2012.
Please download the ImageNet pretrained models (VGG16 and ResNet-101, password: k4z1), and put them under
$DeRPN_ROOT/data/imagenet_models
We also provide the DeRPN pretrained models here (password: fsd8).
cd $DeRPN_ROOT
./experiments/scripts/faster_rcnn_derpn_end2end.sh [GPU_ID] [NET] [DATASET]
# e.g., ./experiments/scripts/faster_rcnn_derpn_end2end.sh 0 VGG16 coco_text
This code is free to the academic community for research purpose only. For commercial purpose usage, please contact Dr. Lianwen Jin: [email protected].