GACVJul 19, 2018

Deriving star cluster parameters with convolutional neural networks. I. Age, mass, and size

arXiv:1807.07658v211 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of extracting astrophysical parameters from star cluster images for astronomers, representing an incremental improvement by applying existing CNN methods to a new domain with specific gains.

The authors tackled the problem of deriving star cluster parameters from images by developing a CNN-based algorithm to simultaneously estimate ages, masses, and sizes directly from multi-band images, achieving high precision and no significant bias for clusters with ages less than 3 Gyr and masses between 250 and 4,000 solar masses.

Context. Convolutional neural networks (CNNs) have been proven to perform fast classification and detection on natural images and have potential to infer astrophysical parameters on the exponentially increasing amount of sky survey imaging data. The inference pipeline can be trained either from real human-annotated data or simulated mock observations. Until now star cluster analysis was based on integral or individual resolved stellar photometry. This limits the amount of information that can be extracted from cluster images. Aims. Develop a CNN-based algorithm aimed to simultaneously derive ages, masses, and sizes of star clusters directly from multi-band images. Demonstrate CNN capabilities on low mass semi-resolved star clusters in a low signal-to-noise ratio regime. Methods. A CNN was constructed based on the deep residual network (ResNet) architecture and trained on simulated images of star clusters with various ages, masses, and sizes. To provide realistic backgrounds, M31 star fields taken from the PHAT survey were added to the mock cluster images. Results. The proposed CNN was verified on mock images of artificial clusters and has demonstrated high precision and no significant bias for clusters of ages $\lesssim$3Gyr and masses between 250 and 4,000 ${\rm M_\odot}$. The pipeline is end-to-end, starting from input images all the way to the inferred parameters; no hand-coded steps have to be performed: estimates of parameters are provided by the neural network in one inferential step from raw images.

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