Feature Visualization within an Automated Design Assessment leveraging Explainable Artificial Intelligence Methods
Raoul Sch\"onhof, Artem Werner, Jannes Elstner, Boldizsar, Zopcsak, Ramez Awad, Marco Huber

TL;DR
This paper explores the use of explainable AI methods to interpret neural network decisions in automated CAD data assessment, aiming to provide geometrical insights that support design optimization.
Contribution
It introduces the application of multiple xAI techniques within the NeuroCAD environment to reveal geometrical features influencing neural network assessments of CAD models.
Findings
Implemented xAI methods (SA, LRP, Grad-CAM, LIME) in NeuroCAD for CAD assessment.
Enabled identification of geometrical features relevant to network decisions.
Facilitated potential design optimization through feature visualization.
Abstract
Not only automation of manufacturing processes but also automation of automation procedures itself become increasingly relevant to automation research. In this context, automated capability assessment, mainly leveraged by deep learning systems driven from 3D CAD data, have been presented. Current assessment systems may be able to assess CAD data with regards to abstract features, e.g. the ability to automatically separate components from bulk goods, or the presence of gripping surfaces. Nevertheless, they suffer from the factor of black box systems, where an assessment can be learned and generated easily, but without any geometrical indicator about the reasons of the system's decision. By utilizing explainable AI (xAI) methods, we attempt to open up the black box. Explainable AI methods have been used in order to assess whether a neural network has successfully learned a given task or…
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