NATO standard mission task symbols pose detection based on symbol requirements
Date
2023
Authors
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Publisher
Tartu Ülikool
Abstract
The objective of this master’s thesis is to develop a series of neural network models that
can accurately detect the pose of NATO mission task symbols. This research is significant
as NATO mission task symbols play a critical role in planning military operations and
automatically identifying their identity, location and pose can save valuable time and
resources when digitizing military plans.
The first step of research involved determining the essential components required to
recreate mission task symbols into the KOLT digital planning system. This required
a thorough analysis of the mission task symbols and their underlying characteristics.
Through this analysis, we were able to identify the crucial features that the models must
detect to sufficiently characterize each mission task symbol.
The second task of research involves developing models that can detect the rotations of
the mission task symbols accurately. Additionally, for trajectory symbols, it is essential to
develop models that can detect and describe the symbols’ trajectory accurately. However,
detecting poses of hand-drawn symbols is challenging, as there is often significant variability
among symbols with the same meaning. Therefore, the model must be designed
to account for this variability.
The success of research will have significant implications for military operations. Accurate
and efficient recognition of the poses of mission task symbols complements
YOLO-based localization that is concurrently implemented in the research group, enabling
AI-based digitalization of military plans. Fast digitalization enhances situational
awareness and decision-making capabilities.
Description
Keywords
Convolutional neural network, machine learning, artificial neural network