Method Details


Details for method 'EfficientPS [Cityscapes-fine]'

 

Method overview

name EfficientPS [Cityscapes-fine]
challenge panoptic semantic labeling
details Understanding the scene in which an autonomous robot operates is critical for its competent functioning. Such scene comprehension necessitates recognizing instances of traffic participants along with general scene semantics which can be effectively addressed by the panoptic segmentation task. In this paper, we introduce the Efficient Panoptic Segmentation (EfficientPS) architecture that consists of a shared backbone which efficiently encodes and fuses semantically rich multi-scale features. We incorporate a new semantic head that aggregates fine and contextual features coherently and a new variant of Mask R-CNN as the instance head. We also propose a novel panoptic fusion module that congruously integrates the output logits from both the heads of our EfficientPS architecture to yield the final panoptic segmentation output. Additionally, we introduce the KITTI panoptic segmentation dataset that contains panoptic annotations for the popularly challenging KITTI benchmark. Extensive evaluations on Cityscapes, KITTI, Mapillary Vistas and Indian Driving Dataset demonstrate that our proposed architecture consistently sets the new state-of-the-art on all these four benchmarks while being the most efficient and fast panoptic segmentation architecture to date.
publication EfficientPS: Efficient Panoptic Segmentation
Rohit Mohan, Abhinav Valada
https://arxiv.org/abs/2004.02307
project page / code https://rl.uni-freiburg.de/research/panoptic
used Cityscapes data fine annotations
used external data ImageNet
runtime n/a
subsampling no
submission date May, 2020
previous submissions 1

 

Average results

Metric AllThingsStuff
PQ 64.0717 56.6879 69.4418
SQ 82.5549 80.9051 83.7548
RQ 76.8316 70.201 81.6538

 

Class results

Class PQ SQ RQ
road 98.5399 98.6375 99.9011
sidewalk 79.0647 85.9412 91.9986
building 89.1302 91.1753 97.757
wall 41.6635 78.4515 53.1073
fence 41.7482 75.9728 54.9515
pole 59.9115 70.1814 85.3667
traffic light 55.6043 76.2789 72.896
traffic sign 70.0636 80.3248 87.2253
vegetation 90.8663 92.0272 98.7385
terrain 47.2025 78.9297 59.8033
sky 90.0648 93.3826 96.4471
person 60.8949 79.0112 77.0712
rider 57.502 75.5016 76.16
car 70.3132 85.1734 82.5531
truck 48.4365 87.8538 55.1331
bus 59.9586 87.4786 68.5408
train 55.079 82.6185 66.6667
motorcycle 50.8774 76.1476 66.8142
bicycle 50.4417 73.4559 68.6694

 

Links

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