Robotics in the Real World: Developing Reliable Field-Robotic Systems via
Mathematical Guarantees and In-Field Testing  is coming at 02/14/2019 -
10:00am

Rogers 226
Thu, 02/14/2019 - 10:00am

Joshua Mangelson
Ph.D. Candidate in Robotics, University of Michigan

Abstract:
In manufacturing, teams of robotics systems, working in coordination with one
another, have led to dramatic increases in safety, efficiency, and profit.
Collaborative teams of robotic vehicles working together in unstructured
environments have the potential to yield similar gains in a variety of
application areas including automatic inspection of underwater structures.
However, autonomous collaboration in real-world environments is significantly
more difficult than in the factory. The main reason for this is because in an
unstructured environment, fundamental information such as the position of the
robotic agent, its relationship to other agents, and a model of the robot's
surroundings all have to be estimated by the robotic vehicle online, while
their estimation can be simplified or engineered out of the problem in a
structured one. In addition, in unstructured environments, failure of a
navigation or perception algorithm that estimates the above quantities can
result in significant damage or the loss of a vehicle. As such, the design of
reliable, real-world, multi-agent systems requires the development of
navigation and perception solutions that consistently return valid results.

In this talk, we propose two methods that bring us closer to consistent
multi-agent autonomous inspection. The first is a method for handling outlier
measurements when merging maps generated by two agents collaboratively
inspecting a structure. The proposed method uses graph theory to enforce that
the selected set of measurements are consistent with one another resulting in
more consistent maps than existing methods. The second is a way of
formulating the simultaneous localization and mapping (SLAM) problem as a
convex polynomial optimization problem. This enables us to guarantee that the
trajectory estimated by the robotic vehicle is the true solution to the posed
optimization problem. We conclude with a discussion of "reliable autonomy" by
describing a set of additional problems that need to be solved to enable
reliable, large-scale, fully-autonomous, multi-agent inspection of underwater
structures.

Bio:

Read more:
http://eecs.oregonstate.edu/colloquium/robotics-real-world-developing-re... 
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[1] 
http://eecs.oregonstate.edu/colloquium/robotics-real-world-developing-reliable-field-robotic-systems-mathematical-guarantees-and
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