Investigating the Impact of Unsupervised Feature-Extraction from Multi-Wavelength Image Data for Photometric Classification of Stars, Galaxies and QSOs

Annika Lindh

Research output: Contribution to conferencePaperpeer-review

Abstract

Accurate classification of astronomical objects currently relies on spectroscopic data. Acquiring this data is time-consuming and expensive compared to photometric data. Hence, improving the accuracy of photometric classification could lead to far better coverage and faster classification pipelines. This paper investigates the benefit of using unsupervised feature-extraction from multi-wavelength image data for photometric classification of stars, galaxies and QSOs. An unsupervised Deep Belief Network is used, giving the model a higher level of interpretability thanks to its generative nature and layer-wise training. A Random Forest classifier is used to measure the contribution of the novel features compared to a set of more traditional baseline features.
Original languageEnglish
DOIs
Publication statusPublished - 2016
Event24th Irish Conference on Artificial Intelligence and Cognitive Science - Dublin, Ireland
Duration: 1 Jan 2016 → …

Conference

Conference24th Irish Conference on Artificial Intelligence and Cognitive Science
Country/TerritoryIreland
CityDublin
Period1/01/16 → …

Keywords

  • photometric classification
  • unsupervised feature-extraction
  • multi-wavelength image data
  • Deep Belief Network
  • Random Forest classifier

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