Dual Decision Improves Open-Set Panoptic Segmentation
Open-set panoptic segmentation (OPS) problem is a new research direction aiming to perform segmentation for both \known classes and \unknown classes, i.e., the objects ("things") that are never annotated in the training set. The main challenges of OPS are twofold: (1) the infinite possibil...
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Zusammenfassung: | Open-set panoptic segmentation (OPS) problem is a new research direction
aiming to perform segmentation for both \known classes and \unknown classes,
i.e., the objects ("things") that are never annotated in the training set. The
main challenges of OPS are twofold: (1) the infinite possibility of the
\unknown object appearances makes it difficult to model them from a limited
number of training data. (2) at training time, we are only provided with the
"void" category, which essentially mixes the "unknown thing" and "background"
classes. We empirically find that directly using "void" category to supervise
\known class or "background" classifiers without screening will lead to an
unsatisfied OPS result. In this paper, we propose a divide-and-conquer scheme
to develop a dual decision process for OPS. We show that by properly combining
a \known class discriminator with an additional class-agnostic object
prediction head, the OPS performance can be significantly improved.
Specifically, we first propose to create a classifier with only \known
categories and let the "void" class proposals achieve low prediction
probability from those categories. Then we distinguish the "unknown things"
from the background by using the additional object prediction head. To further
boost performance, we introduce "unknown things" pseudo-labels generated from
up-to-date models to enrich the training set. Our extensive experimental
evaluation shows that our approach significantly improves \unknown class
panoptic quality, with more than 30\% relative improvements than the existing
best-performed method. |
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DOI: | 10.48550/arxiv.2207.02504 |