Lessons from the Development of an Anomaly Detection Interface on the Mars Perseverance Rover using the ISHMAP Framework
Austin P. Wright, Peter Nemere, Adrian Galvin, Duen Horng Chau, Scott, Davidoff

TL;DR
This paper presents a participatory design approach for developing an interpretable anomaly detection toolkit for Martian geochemistry, demonstrating its effectiveness through a yearlong deployment with NASA scientists and introducing the ISHMAP framework.
Contribution
It introduces the ISHMAP framework for co-creating interpretable anomaly detection models and reports on a novel spectral anomaly detection toolkit used in Mars exploration.
Findings
High accuracy in spectral anomaly detection
Enhanced transparency for scientific interpretation
Successful deployment in Mars rover context
Abstract
While anomaly detection stands among the most important and valuable problems across many scientific domains, anomaly detection research often focuses on AI methods that can lack the nuance and interpretability so critical to conducting scientific inquiry. In this application paper we present the results of utilizing an alternative approach that situates the mathematical framing of machine learning based anomaly detection within a participatory design framework. In a collaboration with NASA scientists working with the PIXL instrument studying Martian planetary geochemistry as a part of the search for extra-terrestrial life; we report on over 18 months of in-context user research and co-design to define the key problems NASA scientists face when looking to detect and interpret spectral anomalies. We address these problems and develop a novel spectral anomaly detection toolkit for PIXL…
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