News Article

IF 1.5 4区 物理与天体物理 Q3 SPECTROSCOPY
Kenji Sakurai
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引用次数: 0

Abstract

Deciphering Burnt and Carbonized Scroll Books with Deep Learning-Assisted X-ray Imaging (February 5, 2024).

There is a program called the Vesuvius Challenge in which investors are funding the deciphering of what was written in the extremely fragile scrolls that were carbonized when Mount Vesuvius erupted in 79 A.D., some 2000 years ago (https://scrollprize.org/). Pompeii is famous for the eruption of Mount Vesuvius, which was buried by volcanic ejecta, etc. Not only Pompeii, but also towns near Mount Vesuvius were buried in the same way. The city of Herculaneum is one of them. The scrolls discovered in Herculaneum in the 1750s are one of the most important research subjects. Looking back in history, one would immediately think of using non-destructive methods of analysis such as X-rays, but in the days before the discovery of X-rays, this was obviously not possible. The method of dismantling the scrolls was unavoidable, and it seems that actual dismantling was done. Afterwards, they were probably restored by hand, but it is still difficult to read the text on them. In 2015, other ancient scrolls, though not from the Vesuvius eruption, were successfully read by X-ray imaging without touching them at all. A commercially available micro X-ray CT device was used (for details, see the paper, William Brent Seales, Clifford Seth Parker, Michael Segal, Emanuel Tov, Pnina Shor, and Yosef Porath, “From damage to discovery via virtual unwrapping: reading the scroll from En-Gedi”, Science Advances, 2, e1601247 (2016). https://doi.org/10.1126/sciadv.1601247). Using X-ray imaging, it is possible to read the inside of a scroll-like book without touching it to open it and reveal its contents. The Vesuvius Challenge program appears to have been inspired by this 2015 success story. Furthermore, while X-ray CT simply images three-dimensional electron density contrasts, deep learning techniques can be used to read text from them (for details, see the paper, Yannis Assael, Thea Sommerschield, Brendan Shillingford, Mahyar Bordbar, John Pavlopoulos, Marita Chatzipanagiotou, Ion Androutsopoulos, Jonathan Prag and Nando de Freitas, “Restoring and attributing ancient texts using deep neural networks”, Nature 603, 280–283 (2022). https://doi.org/10.1038/s41586-022-04448). Recently, the Vesuvius Challenge experiment was conducted using the imaging beamline of the Diamond Light Source synchrotron radiation facility in the UK to collect a large number of 3D CT images of carbonized scrolls. Deep learning was used to decipher the text.

Eventually, the first success was achieved, although only a small part of the text was deciphered. What was written on the scroll turned out to be a philosophical statement about sensation and pleasure. It was announced that three 21-year-old graduate students from Egypt, Switzerland, and the U.S. were awarded $700,000 for their success in using X-rays to decipher what was written in such extremely fragile ancient burnt scrolls. For more details, see the article “First passages of rolled-up Herculaneum Scroll revealed”, Nature 626, 461–462 (2024). https://doi.org/10.1038/d41586-024-00346-8

新闻报道
利用深度学习辅助 X 射线成像破译烧焦和碳化的卷轴书(2024 年 2 月 5 日)。有一个名为 "维苏威火山挑战"(Vesuvius Challenge)的项目,投资者正在资助破译公元 79 年(约 2000 年前)维苏威火山爆发时碳化的极其脆弱的卷轴中的文字(https://scrollprize.org/)。庞贝古城因维苏威火山爆发而闻名,火山喷出物等将其掩埋。不仅是庞贝,维苏威火山附近的城镇也以同样的方式被掩埋。赫库兰尼姆城就是其中之一。17 世纪 50 年代在赫库兰尼姆发现的卷轴是最重要的研究课题之一。回顾历史,人们会立即想到使用 X 射线等非破坏性分析方法,但在发现 X 射线之前的时代,这显然是不可能的。拆解卷轴的方法是不可避免的,而且似乎确实进行了拆解。之后,这些卷轴可能经过人工修复,但仍然难以读懂上面的文字。2015 年,通过 X 射线成像技术成功读取了其他古代卷轴,尽管这些卷轴并非来自维苏威火山爆发,但完全无需接触。我们使用了一台市售的微型 X 射线 CT 设备(详见论文 William Brent Seales, Clifford Seth Parker, Michael Segal, Emanuel Tov, Pnina Shor, and Yosef Porath, "From damage to discovery via virtual unwrapping: reading the scroll from En-Gedi", Science Advances, 2, e1601247 (2016). https://doi.org/10.1126/sciadv.1601247)。利用 X 射线成像技术,可以在不接触卷轴状书籍的情况下阅读其内部内容,从而打开并揭示其内容。维苏威挑战计划似乎就是受到了 2015 年这一成功案例的启发。此外,虽然X射线CT只是简单地对三维电子密度对比进行成像,但深度学习技术却可用于从中读取文字(详见论文:Yannis Assael, Thea Sommerschield, Brendan Shillingford, Mahyar Bordbar, John Pavlopoulos, Marita Chatzipanagiotou, Ion Androutsopoulos, Jonathan Prag and Nando de Freitas, "Restoring and attributing ancient texts using deep neural networks", Nature 603, 280-283 (2022). https://doi.org/10.1038/s41586-022-04448)。最近,利用英国钻石光源同步辐射设施的成像光束线进行了维苏威挑战实验,收集了大量碳化卷轴的三维 CT 图像。最终,虽然只破译了一小部分文字,但首次取得了成功。卷轴上所写的内容原来是关于感觉和快乐的哲学论述。据宣布,来自埃及、瑞士和美国的三名 21 岁研究生获得了 70 万美元的奖金,以表彰他们成功利用 X 射线破译了这种极其脆弱的古代烧焦卷轴上的文字。欲了解更多详情,请参阅文章 "赫库兰尼姆卷轴的首批经文被揭示",《自然》626,461-462(2024 年)。https://doi.org/10.1038/d41586-024-00346-8。
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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来源期刊
X-Ray Spectrometry
X-Ray Spectrometry 物理-光谱学
CiteScore
3.10
自引率
8.30%
发文量
38
审稿时长
6-12 weeks
期刊介绍: X-Ray Spectrometry is devoted to the rapid publication of papers dealing with the theory and application of x-ray spectrometry using electron, x-ray photon, proton, γ and γ-x sources. Covering advances in techniques, methods and equipment, this established journal provides the ideal platform for the discussion of more sophisticated X-ray analytical methods. Both wavelength and energy dispersion systems are covered together with a range of data handling methods, from the most simple to very sophisticated software programs. Papers dealing with the application of x-ray spectrometric methods for structural analysis are also featured as well as applications papers covering a wide range of areas such as environmental analysis and monitoring, art and archaelogical studies, mineralogy, forensics, geology, surface science and materials analysis, biomedical and pharmaceutical applications.
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