This research article uses open-source intelligence (OSINT), the dark web, and artificial intelligence (AI) to identify three previously unknown women in a 1913 photograph with Albert Einstein. The researchers verify the women's identities and the photograph's date and time through extensive online searches of diverse sources, including shadow libraries. This innovative methodology reveals the women's significant, previously overlooked contributions to Einstein's work and highlights the potential of OSINT for historical research. The study also successfully identifies an unknown man in the photograph, using similar methods. The research emphasizes the importance of source criticism and the potential of digital tools to recover lost historical narratives, particularly those involving marginalized figures.
REFERENCE:
Dane J, Verhoef C. Who's that lady? - Applying open source intelligence in a history context.. Endeavour 48(4):100967. 2024 Dec 7 DOI: 10.1016/j.endeavour.2024.100967 PMID: 39647349. https://doi.org/10.1016/j.endeavour.2024.100967
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