Automatic detection of impact craters on Al foils from the Stardust interstellar dust collector using convolutional neural networks

  • Logan Jaeger
  • , Anna L. Butterworth
  • , Zack Gainsforth
  • , Robert Lettieri
  • , Dan Zevin
  • , Augusto Ardizzone
  • , Michael Capraro
  • , Mark Burchell
  • , Penny Wozniakiewicz
  • , Ryan C. Ogliore
  • , Bradley T. De Gregorio
  • , Rhonda M. Stroud
  • , Andrew J. Westphal

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

NASA's Stardust mission utilized a sample collector composed of aerogel and aluminum foil to return cometary and interstellar particles to Earth. Analysis of the aluminum foil begins with locating craters produced by hypervelocity impacts of cometary and interstellar dust. Interstellar dust craters are typically less than one micrometer in size and are sparsely distributed, making them difficult to find. In this paper, we describe a convolutional neural network based on the VGG16 architecture that achieves high specificity and sensitivity in locating impact craters in the Stardust interstellar collector foils. We evaluate its implications for current and future analyses of Stardust samples.

Original languageEnglish
Pages (from-to)1890-1904
Number of pages15
JournalMeteoritics and Planetary Science
Volume56
Issue number10
DOIs
StatePublished - Oct 2021

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