DJW c16313bb6a 第一次提交 10 miesięcy temu
..
README.md c16313bb6a 第一次提交 10 miesięcy temu
metafile.yml c16313bb6a 第一次提交 10 miesięcy temu
scnet_r101_fpn_20e_coco.py c16313bb6a 第一次提交 10 miesięcy temu
scnet_r50_fpn_1x_coco.py c16313bb6a 第一次提交 10 miesięcy temu
scnet_r50_fpn_20e_coco.py c16313bb6a 第一次提交 10 miesięcy temu
scnet_x101-64x4d_fpn_20e_coco.py c16313bb6a 第一次提交 10 miesięcy temu
scnet_x101-64x4d_fpn_8xb1-20e_coco.py c16313bb6a 第一次提交 10 miesięcy temu

README.md

SCNet

SCNet: Training Inference Sample Consistency for Instance Segmentation

Abstract

Cascaded architectures have brought significant performance improvement in object detection and instance segmentation. However, there are lingering issues regarding the disparity in the Intersection-over-Union (IoU) distribution of the samples between training and inference. This disparity can potentially exacerbate detection accuracy. This paper proposes an architecture referred to as Sample Consistency Network (SCNet) to ensure that the IoU distribution of the samples at training time is close to that at inference time. Furthermore, SCNet incorporates feature relay and utilizes global contextual information to further reinforce the reciprocal relationships among classifying, detecting, and segmenting sub-tasks. Extensive experiments on the standard COCO dataset reveal the effectiveness of the proposed method over multiple evaluation metrics, including box AP, mask AP, and inference speed. In particular, while running 38% faster, the proposed SCNet improves the AP of the box and mask predictions by respectively 1.3 and 2.3 points compared to the strong Cascade Mask R-CNN baseline.

Dataset

SCNet requires COCO and COCO-stuff dataset for training. You need to download and extract it in the COCO dataset path. The directory should be like this.

mmdetection
├── mmdet
├── tools
├── configs
├── data
│   ├── coco
│   │   ├── annotations
│   │   ├── train2017
│   │   ├── val2017
│   │   ├── test2017
|   |   ├── stuffthingmaps

Results and Models

The results on COCO 2017val are shown in the below table. (results on test-dev are usually slightly higher than val)

Backbone Style Lr schd Mem (GB) Inf speed (fps) box AP mask AP TTA box AP TTA mask AP Config Download
R-50-FPN pytorch 1x 7.0 6.2 43.5 39.2 44.8 40.9 config model | log
R-50-FPN pytorch 20e 7.0 6.2 44.5 40.0 45.8 41.5 config model | log
R-101-FPN pytorch 20e 8.9 5.8 45.8 40.9 47.3 42.7 config model | log
X-101-64x4d-FPN pytorch 20e 13.2 4.9 47.5 42.3 48.9 44.0 config model | log

Notes

  • Training hyper-parameters are identical to those of HTC.
  • TTA means Test Time Augmentation, which applies horizontal flip and multi-scale testing. Refer to config.

Citation

We provide the code for reproducing experiment results of SCNet.

@inproceedings{vu2019cascade,
  title={SCNet: Training Inference Sample Consistency for Instance Segmentation},
  author={Vu, Thang and Haeyong, Kang and Yoo, Chang D},
  booktitle={AAAI},
  year={2021}
}