Skip to content

Latest commit

 

History

History
29 lines (25 loc) · 2.49 KB

README.md

File metadata and controls

29 lines (25 loc) · 2.49 KB

CornerNet

Introduction

@inproceedings{law2018cornernet,
  title={Cornernet: Detecting objects as paired keypoints},
  author={Law, Hei and Deng, Jia},
  booktitle={15th European Conference on Computer Vision, ECCV 2018},
  pages={765--781},
  year={2018},
  organization={Springer Verlag}
}

Results and models

Backbone Batch Size Step/Total Epochs Mem (GB) Inf time (fps) box AP Download
HourglassNet-104 10 x 5 180/210 13.9 4.2 41.2 model | log
HourglassNet-104 8 x 6 180/210 15.9 4.2 41.2 model | log
HourglassNet-104 32 x 3 180/210 9.5 3.9 40.4 model | log

Note:

  • TTA setting is single-scale and flip=True.
  • Experiments with images_per_gpu=6 are conducted on Tesla V100-SXM2-32GB, images_per_gpu=3 are conducted on GeForce GTX 1080 Ti.
  • Here are the descriptions of each experiment setting:
    • 10 x 5: 10 GPUs with 5 images per gpu. This is the same setting as that reported in the original paper.
    • 8 x 6: 8 GPUs with 6 images per gpu. The total batchsize is similar to paper and only need 1 node to train.
    • 32 x 3: 32 GPUs with 3 images per gpu. The default setting for 1080TI and need 4 nodes to train.