AutoAssign: Differentiable Label Assignment for Dense Object Detection
Introduction
@article{zhu2020autoassign,
title={AutoAssign: Differentiable Label Assignment for Dense Object Detection},
author={Zhu, Benjin and Wang, Jianfeng and Jiang, Zhengkai and Zong, Fuhang and Liu, Songtao and Li, Zeming and Sun, Jian},
journal={arXiv preprint arXiv:2007.03496},
year={2020}
}
Results and Models
| Backbone |
Style |
Lr schd |
Mem (GB) |
box AP |
Config |
Download |
| R-50 |
caffe |
1x |
4.08 |
40.4 |
config |
model | log |
Note:
- We find that the performance is unstable with 1x setting and may fluctuate by about 0.3 mAP. mAP 40.3 ~ 40.6 is acceptable. Such fluctuation can also be found in the original implementation.
- You can get a more stable results ~ mAP 40.6 with a schedule total 13 epoch, and learning rate is divided by 10 at 10th and 13th epoch.