Table 1: Potential Feedback Measures in Task-based Guidance.
Timing Description Mode
Task
specification
The task created by the pilot is checked for plausibility, offering
alternatives for unfeasible task parameterization.
Assistance
Task
assignment
Feedback can be given for tasks that are not in accordance with the
mission objectives or for tasks that do not meet constraints with other
tasks.
Assistance
Before task
execution
A description of the desired action chain is appropriate at this point to
externalize the UAV behavior model and convey a common
understanding of the assigned task (SAT level 1/2).
Transparency
During task
execution
Displaying the current action of each UAV can increase situation
awareness during task execution (SAT level 1). For higher SAT levels,
reasons for action selection can be displayed and projections on action
changes can be made.
Transparency
During task
execution
For tasks covering a wide scope of actions, involving the user in the
choice of action could be beneficial to situation awareness and
performance because the human pilot is not only involved with passive
monitoring but also with contributing to the task, which could increase
vigilance (Parasuraman, 1987).
Interaction
During task
execution
The pilot can be informed, when the prediction changes whether goals
can be achieved (SAT level 3).
Transparency
After task
execution
After a task, the most important feedback is whether a task was
completed successfully or whether it failed. Furthermore, providing an
overview of resource usage can be beneficial.
Transparency
different modalities as a succeeding step. We also
want to investigate the effects of different types of
feedback on mission performance and situation
awareness.
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