Open-World Panoptic Segmentation
Matteo Sodano, Federico Magistri, Jens Behley, Cyrill Stachniss

TL;DR
This paper introduces Con2MAV, a novel approach for open-world panoptic segmentation that detects new categories and instances, and presents PANIC, a challenging benchmark dataset for autonomous driving scenarios.
Contribution
We propose Con2MAV for open-world panoptic segmentation and introduce PANIC, a new dataset with diverse unknown classes for autonomous driving.
Findings
Con2MAV achieves state-of-the-art results on open-world segmentation tasks.
PANIC dataset contains over 50 unknown classes and 4000 object instances.
Our approach performs well on both known and unknown categories.
Abstract
Perception is a key building block of autonomously acting vision systems such as autonomous vehicles. It is crucial that these systems are able to understand their surroundings in order to operate safely and robustly. Additionally, autonomous systems deployed in unconstrained real-world scenarios must be able of dealing with novel situations and object that have never been seen before. In this article, we tackle the problem of open-world panoptic segmentation, i.e., the task of discovering new semantic categories and new object instances at test time, while enforcing consistency among the categories that we incrementally discover. We propose Con2MAV, an approach for open-world panoptic segmentation that extends our previous work, ContMAV, which was developed for open-world semantic segmentation. Through extensive experiments across multiple datasets, we show that our model achieves…
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Taxonomy
TopicsGeographic Information Systems Studies
