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Machine Learning on Difference Image Analysis: A comparison of methods for transient detection
by
Beroiz, M
, Nilo Castellón, J L
, Colazo, C
, Sánchez, B
, Domínguez R, M J
, Lares, M
, Schneiter, M
, Quiñones, C
, Díaz, M C
, Tornatore, M
, Cabral, J B
, Gurovich, S
, D García Lambas
, Girardini, C
, Artola, R
in
Algorithms
/ Artificial intelligence
/ Computer simulation
/ Gravitational waves
/ Image analysis
/ Image detection
/ Machine learning
/ Parameter identification
/ Subtraction
2019
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Machine Learning on Difference Image Analysis: A comparison of methods for transient detection
by
Beroiz, M
, Nilo Castellón, J L
, Colazo, C
, Sánchez, B
, Domínguez R, M J
, Lares, M
, Schneiter, M
, Quiñones, C
, Díaz, M C
, Tornatore, M
, Cabral, J B
, Gurovich, S
, D García Lambas
, Girardini, C
, Artola, R
in
Algorithms
/ Artificial intelligence
/ Computer simulation
/ Gravitational waves
/ Image analysis
/ Image detection
/ Machine learning
/ Parameter identification
/ Subtraction
2019
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Machine Learning on Difference Image Analysis: A comparison of methods for transient detection
by
Beroiz, M
, Nilo Castellón, J L
, Colazo, C
, Sánchez, B
, Domínguez R, M J
, Lares, M
, Schneiter, M
, Quiñones, C
, Díaz, M C
, Tornatore, M
, Cabral, J B
, Gurovich, S
, D García Lambas
, Girardini, C
, Artola, R
in
Algorithms
/ Artificial intelligence
/ Computer simulation
/ Gravitational waves
/ Image analysis
/ Image detection
/ Machine learning
/ Parameter identification
/ Subtraction
2019
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Machine Learning on Difference Image Analysis: A comparison of methods for transient detection
Paper
Machine Learning on Difference Image Analysis: A comparison of methods for transient detection
2019
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Overview
We present a comparison of several Difference Image Analysis (DIA) techniques, in combination with Machine Learning (ML) algorithms, applied to the identification of optical transients associated with gravitational wave events. Each technique is assessed based on the scoring metrics of Precision, Recall, and their harmonic mean F1, measured on the DIA results as standalone techniques, and also in the results after the application of ML algorithms, on transient source injections over simulated and real data. This simulations cover a wide range of instrumental configurations, as well as a variety of scenarios of observation conditions, by exploring a multi dimensional set of relevant parameters, allowing us to extract general conclusions related to the identification of transient astrophysical events. The newest subtraction techniques, and particularly the methodology published in Zackay et al. (2016) are implemented in an Open Source Python package, named properimage, suitable for many other astronomical image analyses. This together with the ML libraries we describe, provides an effective transient detection software pipeline. Here we study the effects of the different ML techniques, and the relative feature importances for classification of transient candidates, and propose an optimal combined strategy. This constitutes the basic elements of pipelines that could be applied in searches of electromagnetic counterparts to GW sources.
Publisher
Cornell University Library, arXiv.org
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