Sense-Assess-eXplain (SAX): Building Trust in Autonomous Vehicles in
Challenging Real-World Driving Scenarios
- URL: http://arxiv.org/abs/2005.02031v1
- Date: Tue, 5 May 2020 09:54:58 GMT
- Title: Sense-Assess-eXplain (SAX): Building Trust in Autonomous Vehicles in
Challenging Real-World Driving Scenarios
- Authors: Matthew Gadd, Daniele De Martini, Letizia Marchegiani, Paul Newman,
Lars Kunze
- Abstract summary: We address fundamental technical issues to overcome critical barriers to assurance and regulation for large-scale deployments of autonomous systems.
We present how we build robots that can robustly sense and interpret their environment using traditional as well as unconventional sensors.
We describe ongoing work in the collection of an unusual, rare, and highly valuable dataset.
- Score: 24.459719212176637
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper discusses ongoing work in demonstrating research in mobile
autonomy in challenging driving scenarios. In our approach, we address
fundamental technical issues to overcome critical barriers to assurance and
regulation for large-scale deployments of autonomous systems. To this end, we
present how we build robots that (1) can robustly sense and interpret their
environment using traditional as well as unconventional sensors; (2) can assess
their own capabilities; and (3), vitally in the purpose of assurance and trust,
can provide causal explanations of their interpretations and assessments. As it
is essential that robots are safe and trusted, we design, develop, and
demonstrate fundamental technologies in real-world applications to overcome
critical barriers which impede the current deployment of robots in economically
and socially important areas. Finally, we describe ongoing work in the
collection of an unusual, rare, and highly valuable dataset.
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