This repository includes the code for Soft-NMS. Soft-NMS is integrated with two object detectors, R-FCN and Faster-RCNN. The Soft-NMS paper can be found here.
Soft-NMS is complementary to multi-scale testing and iterative bounding box regression. Check MSRA slides from the COCO 2017 challenge.
8 out of top 15 submissions used Soft-NMS in the COCO 2017 detection challenge!.
We are also making our ICCV reviews and our rebuttal public. This should help to clarify some concerns which you may have.
To test the models with soft-NMS, clone the project and test your models as in standard object detection pipelines. This repository supports Faster-RCNN and R-FCN where an additional flag can be used for soft-NMS.
The flags are as follows,
- Standard NMS. Use flag
TEST.SOFT_NMS
0 - Soft-NMS with linear weighting. Use flag
TEST.SOFT_NMS
1 (this is the default option) - Soft-NMS with Gaussian weighting. Use flag
TEST.SOFT_NMS
2
In addition, you can specify the sigma parameter for Gaussian weighting and the threshold parameter for linear weighting. Detections below 0.001 are discarded. For integrating soft-NMS in your code, refer to cpu_soft_nms
function in lib/nms/cpu_nms.pyx
and soft_nms
wrapper function in lib/fast_rcnn/nms_wrapper.py
. You can also implement your own weighting function in this file.
For testing a model on COCO or PASCAL, use the following script
./tools/test_net.py --gpu ${GPU_ID} \
--def models/${PT_DIR}/${NET}/rfcn_end2end/test_agnostic.prototxt \
--net ${NET_FINAL} \
--imdb ${TEST_IMDB} \
--cfg experiments/cfgs/rfcn_end2end_ohem_${PT_DIR}.yml \
--set TEST.SOFT_NMS 1 # performs soft-NMS with linear weighting
${EXTRA_ARGS}
GPU_ID is the GPU you want to test on
NET_FINAL is the caffe-model to use
PT_DIR in {pascal_voc, coco} is the dataset directory
DATASET in {pascal_voc, coco} is the dataset to use
TEST_IMDB in {voc_0712_test,coco_2014_minival,coco_2014_test} is the test imdb
TEST.SOFT_NMS in {0,1,2} is flag for different NMS algorithms. 0 is standard NMS, 1 performs soft-NMS with linear weighting and 2 performs soft-NMS with gaussian weighting
Please refer to py-R-FCN-multiGPU for details about setting up object detection pipelines. The Soft-NMS repository also contains code for training these detectors on multiple GPUs. The position sensitive ROI Pooling layer is updated so that interpolation of bins is correct, like ROIAlign in Mask RCNN. The COCO detection model for R-FCN can be found here. All other detection models used in the paper are publicly available.
training data | test data | mAP@[0.5:0.95] | |
---|---|---|---|
R-FCN, NMS | COCO 2014 train+val -minival | COCO 2015 minival | 33.9% |
R-FCN, Soft-NMS L | COCO 2014 train+val -minival | COCO 2015 minival | 34.8% |
R-FCN, Soft-NMS G | COCO 2014 train+val -minival | COCO 2015 minival | 35.1% |
F-RCNN, NMS | COCO 2014 train+val -minival | COCO 2015 test-dev | 24.4% |
F-RCNN, Soft-NMS L | COCO 2014 train+val -minival | COCO 2015 test-dev | 25.5% |
F-RCNN, Soft-NMS G | COCO 2014 train+val -minival | COCO 2015 test-dev | 25.5% |
R-FCN uses ResNet-101 as the backbone CNN architecture, while Faster-RCNN is based on VGG16.
If you find this repository useful in your research, please consider citing:
@article{
Author = {Navaneeth Bodla and Bharat Singh and Rama Chellappa and Larry S. Davis},
Title = {Soft-NMS -- Improving Object Detection With One Line of Code},
Booktitle = {Proceedings of the IEEE International Conference on Computer Vision},
Year = {2017}
}