
| ID | 69353 | 
| フルテキストURL | |
| 著者 | 
                Kumar, Rahul
                The Pheasant Memorial Laboratory, Institute for Planetary Materials, Okayama University
     
                Kobayashi, Katsura
                The Pheasant Memorial Laboratory, Institute for Planetary Materials, Okayama University
     
                    Potiszil, Christian
                The Pheasant Memorial Laboratory, Institute for Planetary Materials, Okayama University
                    ORCID 
                    publons 
                    researchmap 
     
                    Kunihiro, Tak
                The Pheasant Memorial Laboratory, Institute for Planetary Materials, Okayama University
                    Kaken ID 
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| 抄録 | Asteroidal materials contain organic matter (OM), which records a number of extraterrestrial environments and thus provides a record of Solar System processes. OM contain essential compounds for the origin of life. To understand the origin and evolution of OM, systematic identification and detailed observation using in-situ techniques is required. While both nm- and μm-sized OM were studied previously, only a small portion of a given sample surface was investigated in each study. Here, a novel workflow was developed and applied to identify and classify μm-sized OM on mm-sized asteroidal materials. The workflow involved image processing and machine learning, enabling a comprehensive and non-biased way of identifying, classifying, and measuring the properties of OM. We found that identifying OM is more accurate by classification with machine learning than by clustering. On the approach of classification with machine learning, five algorithms were tested. The random forest algorithm was selected as it scored the highest in 4 out of 5 accuracy parameters during evaluation. The workflow gave modal OM abundances that were consistent with those identified manually, demonstrating that the workflow can accurately identify 1-15 μm-sized OM. The size distribution of OM was modeled using the power-law distribution, giving slope α values that were consistent with fragmentation processes. The shape of the OM was quantified using circularity and solidity, giving a positive correlation and indicating these properties are closely related. Overall, the workflow enabled identification of many OM quickly and accurately and the obtainment of chemical and petrographic information. Such information can help the selection of OM for further in-situ techniques, and elucidate the origin and evolution of OM preserved in asteroidal materials. | 
| キーワード | Asteroidal material Organic matter Carbonaceous chondrites RyuguImage processing Machine learning Size distribution | 
| 発行日 | 2025-09 | 
| 出版物タイトル | 
            Applied Computing and Geosciences
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| 巻 | 27巻 | 
| 出版者 | Elsevier BV | 
| 開始ページ | 100277 | 
| ISSN | 2590-1974 | 
| 資料タイプ | 
            学術雑誌論文
     | 
| 言語 | 
            英語
     | 
| OAI-PMH Set | 
            岡山大学
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| 著作権者 | © 2025 The Authors. | 
| 論文のバージョン | publisher | 
| DOI | |
| Web of Science KeyUT | |
| 関連URL | isVersionOf https://doi.org/10.1016/j.acags.2025.100277 | 
| ライセンス | http://creativecommons.org/licenses/by/4.0/ | 
| 助成情報 | 
            ( 文部科学省 / Ministry of Education )
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