Multimedia Security, Volume 1. William Puech

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Название Multimedia Security, Volume 1
Автор произведения William Puech
Жанр Зарубежная компьютерная литература
Серия
Издательство Зарубежная компьютерная литература
Год выпуска 0
isbn 9781119901792



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ON FIGURE 1.16.– The forged image comes from the database associated with Huh et al. (2018). The Siamese network gives a similarity score for each patch with a reference patch. The black areas in the Siamese network result correspond to patches that are incompatible with the reference patch.

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