Open-World Active Learning with Stacking Ensemble for Self-Driving Cars
- URL: http://arxiv.org/abs/2109.06628v1
- Date: Fri, 10 Sep 2021 19:06:37 GMT
- Title: Open-World Active Learning with Stacking Ensemble for Self-Driving Cars
- Authors: Paulo R. Vieira, Pedro D. F\'elix, Luis Macedo
- Abstract summary: We propose an algorithm to identify not only all the known entities that may appear in front of the car, but also to detect and learn the classes of those unknown objects.
Our approach relies on the DOC algorithm as well as on the Query-by-Committee algorithm.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The environments, in which autonomous cars act, are high-risky, dynamic, and
full of uncertainty, demanding a continuous update of their sensory information
and knowledge bases. The frequency of facing an unknown object is too high
making hard the usage of Artificial Intelligence (AI) classical classification
models that usually rely on the close-world assumption. This problem of
classifying objects in this domain is better faced with and open-world AI
approach. We propose an algorithm to identify not only all the known entities
that may appear in front of the car, but also to detect and learn the classes
of those unknown objects that may be rare to stand on an highway (e.g., a lost
box from a truck). Our approach relies on the DOC algorithm from Lei Shu et.
al. as well as on the Query-by-Committee algorithm.
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