Croft, 2020 - Google Patents
Design and Applications of Differentially Private Mechanisms: Adherence to Query Range Constraints and Obfuscation of Facial ImagesCroft, 2020
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- 12027750958041356363
- Author
- Croft W
- Publication year
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Collection and dissemination of data are common tasks motivated by a number of benefits attained through the analysis of rich datasets. Yet many datasets contain sensitive information about individuals which must be duly protected if the data is to be used or …
- 230000001815 facial 0 title abstract description 48
Classifications
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- G06F21/6245—Protecting personal data, e.g. for financial or medical purposes
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