Tunable Hybrid Proposal Networks for the Open World
Current state-of-the-art object proposal networks are trained with a closed-world assumption, meaning they learn to only detect objects of the training classes. These models fail to provide high recall in open-world environments where important novel objects may be encountered. While a handful of re...
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Zusammenfassung: | Current state-of-the-art object proposal networks are trained with a
closed-world assumption, meaning they learn to only detect objects of the
training classes. These models fail to provide high recall in open-world
environments where important novel objects may be encountered. While a handful
of recent works attempt to tackle this problem, they fail to consider that the
optimal behavior of a proposal network can vary significantly depending on the
data and application. Our goal is to provide a flexible proposal solution that
can be easily tuned to suit a variety of open-world settings. To this end, we
design a Tunable Hybrid Proposal Network (THPN) that leverages an adjustable
hybrid architecture, a novel self-training procedure, and dynamic loss
components to optimize the tradeoff between known and unknown object detection
performance. To thoroughly evaluate our method, we devise several new
challenges which invoke varying degrees of label bias by altering known class
diversity and label count. We find that in every task, THPN easily outperforms
existing baselines (e.g., RPN, OLN). Our method is also highly data efficient,
surpassing baseline recall with a fraction of the labeled data. |
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DOI: | 10.48550/arxiv.2208.11050 |