Chen Long , Sheng Zheng , Yao Huang , Shuguang Zeng , Zhibo Jiang , Zhiwei Chen , Xiaoyu Luo , Yu Jiang , Xiangyun Zeng
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The automatic verification algorithm eliminates the clump candidates with low confidence, thus improving the accuracy of the final detection performance. The validation effect of MCVnet is verified in the Milky Way Imaging Scroll Painting (MWISP) project within the region l=+180<span><math><msup><mrow></mrow><mrow><mo>∘</mo></mrow></msup></math></span> to +190<span><math><msup><mrow></mrow><mrow><mo>∘</mo></mrow></msup></math></span>, b=-5<span><math><msup><mrow></mrow><mrow><mo>∘</mo></mrow></msup></math></span> to +5<span><math><msup><mrow></mrow><mrow><mo>∘</mo></mrow></msup></math></span> and v=-200 km s<sup>−1</sup> to +200 km s<sup>−1</sup>. The experimental results show that the precision of MCVnet agree with the manual verification by more than 90%, which illustrates the effectiveness of the method in this paper for clump verification. Moreover, the combination of Local Density Clustering (LDC) and MCVnet increases the accuracy of LDC.</p></div>","PeriodicalId":54727,"journal":{"name":"New Astronomy","volume":"110 ","pages":"Article 102215"},"PeriodicalIF":1.9000,"publicationDate":"2024-03-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Automatically verifying molecular clumps based on supervised learning\",\"authors\":\"Chen Long , Sheng Zheng , Yao Huang , Shuguang Zeng , Zhibo Jiang , Zhiwei Chen , Xiaoyu Luo , Yu Jiang , Xiangyun Zeng\",\"doi\":\"10.1016/j.newast.2024.102215\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>The detection and statistical analysis of molecular clumps can provide important clues for understanding star formation. In order to improve the reliability of candidates identified by molecular clump detection algorithm, we present a molecular clump verification network (called MCVnet) based on supervised learning in this paper. First, a molecular clump detection algorithm is used to identify the candidates for the clumps. Then the confidence level of each candidate clump is calculated using the MCVnet. Finally, the clumps are classified into three classes (”Yes”,”No”,”Uncertain”) according to the output confidence. The automatic verification algorithm eliminates the clump candidates with low confidence, thus improving the accuracy of the final detection performance. 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引用次数: 0
摘要
分子团块的探测和统计分析可以为理解恒星的形成提供重要线索。为了提高分子团块探测算法识别出的候选分子团块的可靠性,我们在本文中提出了一种基于监督学习的分子团块验证网络(称为 MCVnet)。首先,使用分子团块检测算法识别候选团块。然后,使用 MCVnet 计算每个候选团块的置信度。最后,根据输出的置信度将分子团块分为三类("是"、"否 "和 "不确定")。自动验证算法剔除了置信度低的候选树块,从而提高了最终检测性能的准确性。MCVnet的验证效果在银河系成像卷轴绘画(MWISP)项目中得到了验证,区域范围为l=+180∘至+190∘,b=-5∘至+5∘,v=-200 km s-1 至 +200 km s-1。实验结果表明,MCVnet 的精确度与人工验证的吻合度超过 90%,这说明本文的方法在团块验证方面是有效的。此外,局部密度聚类(LDC)与 MCVnet 的结合提高了 LDC 的精度。
Automatically verifying molecular clumps based on supervised learning
The detection and statistical analysis of molecular clumps can provide important clues for understanding star formation. In order to improve the reliability of candidates identified by molecular clump detection algorithm, we present a molecular clump verification network (called MCVnet) based on supervised learning in this paper. First, a molecular clump detection algorithm is used to identify the candidates for the clumps. Then the confidence level of each candidate clump is calculated using the MCVnet. Finally, the clumps are classified into three classes (”Yes”,”No”,”Uncertain”) according to the output confidence. The automatic verification algorithm eliminates the clump candidates with low confidence, thus improving the accuracy of the final detection performance. The validation effect of MCVnet is verified in the Milky Way Imaging Scroll Painting (MWISP) project within the region l=+180 to +190, b=-5 to +5 and v=-200 km s−1 to +200 km s−1. The experimental results show that the precision of MCVnet agree with the manual verification by more than 90%, which illustrates the effectiveness of the method in this paper for clump verification. Moreover, the combination of Local Density Clustering (LDC) and MCVnet increases the accuracy of LDC.
期刊介绍:
New Astronomy publishes articles in all fields of astronomy and astrophysics, with a particular focus on computational astronomy: mathematical and astronomy techniques and methodology, simulations, modelling and numerical results and computational techniques in instrumentation.
New Astronomy includes full length research articles and review articles. The journal covers solar, stellar, galactic and extragalactic astronomy and astrophysics. It reports on original research in all wavelength bands, ranging from radio to gamma-ray.