Adaptive Pyramid Context Network for Semantic Segmentation (APCNet CVPR'2019)

Overview

Adaptive Pyramid Context Network for Semantic Segmentation (APCNet CVPR'2019)

Introduction

Official implementation of Adaptive Pyramid Context Network for Semantic Segmentation (Paper).
🔥 🔥 APCNet is on MMsegmentation. 🔥 🔥

@InProceedings{He_2019_CVPR,
author = {He, Junjun and Deng, Zhongying and Zhou, Lei and Wang, Yali and Qiao, Yu},
title = {Adaptive Pyramid Context Network for Semantic Segmentation},
booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
month = {June},
year = {2019}
}

Overview

Framework

image

Results and models

Cityscapes

Method Backbone Crop Size Lr schd Mem (GB) Inf time (fps) mIoU mIoU(ms+flip) config download
APCNet R-50-D8 512x1024 40000 7.7 3.57 78.02 79.26 config model | log
APCNet R-101-D8 512x1024 40000 11.2 2.15 79.08 80.34 config model | log
APCNet R-50-D8 769x769 40000 8.7 1.52 77.89 79.75 config model | log
APCNet R-101-D8 769x769 40000 12.7 1.03 77.96 79.24 config model | log
APCNet R-50-D8 512x1024 80000 - - 78.96 79.94 config model | log
APCNet R-101-D8 512x1024 80000 - - 79.64 80.61 config model | log
APCNet R-50-D8 769x769 80000 - - 78.79 80.35 config model | log
APCNet R-101-D8 769x769 80000 - - 78.45 79.91 config model | log

ADE20K

Method Backbone Crop Size Lr schd Mem (GB) Inf time (fps) mIoU mIoU(ms+flip) config download
APCNet R-50-D8 512x512 80000 10.1 19.61 42.20 43.30 config model | log
APCNet R-101-D8 512x512 80000 13.6 13.10 45.54 46.65 config model | log
APCNet R-50-D8 512x512 160000 - - 43.40 43.94 config model | log
APCNet R-101-D8 512x512 160000 - - 45.41 46.63 config model | log
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