TL;DR
This paper evaluates the effectiveness of open world recognition algorithms under domain-shift conditions, revealing significant performance drops and highlighting the need for more robust methods for real-world robotic vision.
Contribution
It introduces the first benchmark for assessing open world recognition under domain-shift and analyzes existing algorithms' limitations in such scenarios.
Findings
OWR algorithms perform poorly under domain-shift.
Domain generalization techniques only slightly improve performance.
Current methods are insufficient for reliable open world recognition in real-world conditions.
Abstract
Robotic visual systems operating in the wild must act in unconstrained scenarios, under different environmental conditions while facing a variety of semantic concepts, including unknown ones. To this end, recent works tried to empower visual object recognition methods with the capability to i) detect unseen concepts and ii) extended their knowledge over time, as images of new semantic classes arrive. This setting, called Open World Recognition (OWR), has the goal to produce systems capable of breaking the semantic limits present in the initial training set. However, this training set imposes to the system not only its own semantic limits, but also environmental ones, due to its bias toward certain acquisition conditions that do not necessarily reflect the high variability of the real-world. This discrepancy between training and test distribution is called domain-shift. This work…
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