Method Details


Details for method 'Panoptic-DeepLab [Cityscapes-fine]'

 

Method overview

name Panoptic-DeepLab [Cityscapes-fine]
challenge panoptic semantic labeling
details Our proposed bottom-up Panoptic-DeepLab is conceptually simple yet delivers state-of-the-art results. The Panoptic-DeepLab adopts dual-ASPP and dual-decoder modules, specific to semantic segmentation and instance segmentation respectively. The semantic segmentation prediction follows the typical design of any semantic segmentation model (e.g., DeepLab), while the instance segmentation prediction involves a simple instance center regression, where the model learns to predict instance centers as well as the offset from each pixel to its corresponding center. This submission exploits only Cityscapes fine annotations.
publication Panoptic-DeepLab
Bowen Cheng, Maxwell D. Collins, Yukun Zhu, Ting Liu, Thomas S. Huang, Hartwig Adam, Liang-Chieh Chen
https://arxiv.org/abs/1910.04751
project page / code
used Cityscapes data fine annotations
used external data ImageNet
runtime n/a
subsampling no
submission date September, 2019
previous submissions

 

Average results

Metric AllThingsStuff
PQ 62.2972 52.1193 69.6993
SQ 82.3783 80.6786 83.6144
RQ 74.7778 64.6524 82.1417

 

Class results

Class PQ SQ RQ
road 98.4785 98.6412 99.8351
sidewalk 78.0523 85.4307 91.3633
building 88.9589 91.1003 97.6494
wall 38.7775 77.1241 50.2793
fence 38.5747 75.8294 50.8704
pole 64.2534 71.1465 90.3114
traffic light 61.5275 75.3805 81.6226
traffic sign 70.8871 80.6779 87.8643
vegetation 90.7506 91.9077 98.7411
terrain 46.0325 79.301 58.0478
sky 90.3989 93.2196 96.9742
person 54.119 77.6636 69.6838
rider 50.2986 73.5974 68.3429
car 66.7578 84.885 78.6449
truck 44.8522 87.2126 51.4286
bus 58.1217 88.5371 65.6467
train 51.0523 83.9418 60.8187
motorcycle 47.3578 76.808 61.6575
bicycle 44.3946 72.783 60.9958

 

Links

Download results as .csv file

Benchmark page