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      "text": "Agencies reported using facial recognition for criminal investigations and to verify a person's identity remotely (due to Covid-19).\nSix agencies processed images of the “unrest, riots, or protests following the death of George Floyd in May 2020”, while three agencies analysed images of the storming of the US Capitol on January 6, 2021.\nThe technology used by 14 agencies to support criminal investigations were owned by non-federal agencies and only one agency tracked by their employees used the system. This raises concerns over potential misuse of facial recognition.",
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      "text": "Source: GAO analysis of survey data. | GAO-21-518",
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