Shape Index Descriptors Applied to Texture-Based Galaxy Analysis

K. S. Pedersen, Kristoffer Stensbo-Smidt, A. Zirm, C. Igel
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引用次数: 19

Abstract

A texture descriptor based on the shape index and the accompanying curvedness measure is proposed, and it is evaluated for the automated analysis of astronomical image data. A representative sample of images of low-red shift galaxies from the Sloan Digital Sky Survey (SDSS) serves as a test bed. The goal of applying texture descriptors to these data is to extract novel information about galaxies, information which is often lost in more traditional analysis. In this study, we build a regression model for predicting a spectroscopic quantity, the specific star-formation rate (sSFR). As texture features we consider multi-scale gradient orientation histograms as well as multi-scale shape index histograms, which lead to a new descriptor. Our results show that we can successfully predict spectroscopic quantities from the texture in optical multi-band images. We successfully recover the observed bi-modal distribution of galaxies into quiescent and star-forming. The state-of-the-art for predicting the sSFR is a color-based physical model. We significantly improve its accuracy by augmenting the model with texture information. This study is the first step towards enabling the quantification of physical galaxy properties from imaging data alone.
形状索引描述符应用于基于纹理的星系分析
提出了一种基于形状指数和曲率测度的纹理描述符,并对其进行了评价,用于天文图像数据的自动分析。来自斯隆数字巡天(SDSS)的低红移星系的代表性图像样本作为测试平台。将纹理描述符应用于这些数据的目的是提取关于星系的新信息,这些信息在更传统的分析中经常丢失。在这项研究中,我们建立了一个回归模型来预测光谱量,特定恒星形成速率(sSFR)。作为纹理特征,我们考虑了多尺度梯度方向直方图和多尺度形状索引直方图,从而得到了一种新的描述子。结果表明,我们可以成功地从光学多波段图像的纹理中预测光谱量。我们成功地将观测到的星系的双峰分布恢复为静止和恒星形成。预测sSFR的最先进技术是基于颜色的物理模型。我们通过纹理信息增强模型,显著提高了模型的准确性。这项研究是实现仅从成像数据量化物理星系特性的第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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