D2Det
- This code is an official implementation of "D2Det: Towards High Quality Object Detection and Instance Segmentation (CVPR2020)" based on the open source object detection toolbox mmdetection.
- We also provide a new version using mmdetection v2.1.0, which can further support large vocabulary datasets LVIS and Objects365.
Introduction
We propose a novel two-stage detection method, D2Det, that collectively addresses both precise localization and accurate classification. For precise localization, we introduce a dense local regression that predicts multiple dense box offsets for an object proposal. Different from traditional regression and keypoint-based localization employed in two-stage detectors, our dense local regression is not limited to a quantized set of keypoints within a fixed region and has the ability to regress position-sensitive real number dense offsets, leading to more precise localization. The dense local regression is further improved by a binary overlap prediction strategy that reduces the influence of background region on the final box regression. For accurate classification, we introduce a discriminative RoI pooling scheme that samples from various sub-regions of a proposal and performs adaptive weighting to obtain discriminative features.
Installation
- Please refer to INSTALL.md of mmdetection.
- I use pytorch1.1.0, cuda9.0/10.0, and mmcv0.4.3.
Train and Inference
Please use the following commands for training and testing by single GPU or multiple GPUs.
Train with a single GPU
python tools/train.py ${CONFIG_FILE}
Train with multiple GPUs
./tools/dist_train.sh ${CONFIG_FILE} ${GPU_NUM} [optional arguments]
Test with a single GPU
python tools/test.py ${CONFIG_FILE} ${CHECKPOINT_FILE} [--out ${RESULT_FILE}] [--eval ${EVAL_METRICS}] [--show]
Test with multiple GPUs
./tools/dist_test.sh ${CONFIG_FILE} ${CHECKPOINT_FILE} ${GPU_NUM} [--out ${RESULT_FILE}] [--eval ${EVAL_METRICS}]
- CONFIG_FILE about D2Det is in configs/D2Det, please refer to GETTING_STARTED.md for more details.
Demo
With our trained model, detection results of an image can be visualized using the following command.
python ./demo/D2Det_demo.py ${CONFIG_FILE} ${CHECKPOINT_FILE} ${IMAGE_FILE} [--out ${OUT_PATH}]
e.g.,
python ./demo/D2Det_demo.py ./configs/D2Det/D2Det_instance_r101_fpn_2x.py ./D2Det-instance-res101.pth ./demo/demo.jpg --out ./demo/aa.jpg
Results
We provide some models with different backbones and results of object detection and instance segmentation on MS COCO benchmark.
name | backbone | iteration | task | validation | test-dev | download |
---|---|---|---|---|---|---|
D2Det | ResNet50 | 24 epoch | object detection | 43.7 (box) | 43.9 (box) | model |
D2Det | ResNet101 | 24 epoch | object detection | 44.9 (box) | 45.4 (box) | model |
D2Det | ResNet101-DCN | 24 epoch | object detection | 46.9 (box) | 47.5 (box) | model |
D2Det | ResNet101 | 24 epoch | instance segmentation | 39.8 (mask) | 40.2 (mask) | model |
- All the models are based on single-scale training and all the results are based on single-scale inference.
Citation
If the project helps your research, please cite this paper.
@article{Cao_D2Det_CVPR_2020,
author = {Jiale Cao and Hisham Cholakkal and Rao Muhammad Anwer and Fahad Shahbaz Khan and Yanwei Pang and Ling Shao},
title = {D2Det: Towards High Quality Object Detection and Instance Segmentation},
journal = {Proc. IEEE Conference on Computer Vision and Pattern Recognition},
year = {2020}
}
Acknowledgement
Many thanks to the open source codes, i.e., mmdetection and Grid R-CNN plus.