Deepfake detection
US-2024355334-A1 · Oct 24, 2024 · US
US9947324B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-9947324-B2 |
| Application number | US-201615130944-A |
| Country | US |
| Kind code | B2 |
| Filing date | Apr 16, 2016 |
| Priority date | Apr 22, 2015 |
| Publication date | Apr 17, 2018 |
| Grant date | Apr 17, 2018 |
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A first similarity degree processor calculates first similarity degrees between a feature value in voice signal of each of first speakers and each feature value in a plurality of unspecified speaker models of a plurality of unspecified speakers. The processor specifies a plurality of the unspecified speaker models for which the first similarity degrees are equal to or greater than a prescribed value. The processor also associates and stores each of the first speakers and the specified unspecified speaker models. Additionally, the processor calculates, for each of the first speakers, a plurality of second similarity degrees between a feature value in a voice signal of a second speaker and each feature values in the unspecified speaker models associated with the first speakers and stored in a second speaker model storage. The processor further specifies the second speaker based on the second similarity degrees.
Opening claim text (preview).
What is claimed is: 1. A speaker identification method, comprising: executing, using a processor, learning mode processing using a first database, in which a plurality of unspecified speakers and a plurality of unspecified speaker models obtained by modeling features of voices of the plurality of unspecified speakers are associated and stored, is used to create a second database, in which first speakers who are not stored in the first database and a plurality of the unspecified speaker models are associated and stored; and executing, using the processor, identification mode processing in which the second database is used to identify a second speaker, wherein, in the executing of the learning mode processing, a voice signal of each of the first speakers is acquired, first similarity degrees between a feature value in the acquired voice signal of each of the first speakers and each feature value in the plurality of unspecified speaker models stored in the first database are calculated, a plurality of the unspecified speaker models for which the calculated first similarity degrees are equal to or greater than a prescribed value are specified, and each of the first speakers and the specified plurality of unspecified speaker models are associated and stored in the second database, and in the executing of the identification mode processing, a voice signal of the second speaker is acquired, a plurality of second similarity degrees between a feature value in the acquired voice signal of the second speaker and each feature value in the plurality of unspecified speaker models associated with the first speakers and stored in the second database are calculated for each of the first speakers, the calculated plurality of second similarity degrees are corrected by multiplying each of the plurality of second similarity degrees by a weighting value that corresponds to a ranking of the first similarity degrees, a total value obtained by totaling the corrected plurality of second similarity degrees is calculated for each of the first speakers, and one of the first speakers stored in the second database who corresponds to the second speaker is specified based on the calculated total values. 2. The speaker identification method according to claim 1 , wherein the weighting value increases as the first similarity degrees increase. 3. The speaker identification method according to claim 1 , wherein a total value obtained by totaling the plurality of second similarity degrees that are equal to or greater than a prescribed value from among the calculated plurality of second similarity degrees is calculated for each of the first speakers, and the one of the first speakers stored in the second database who corresponds to the second speaker is specified based on the calculated total values. 4. The speaker identification method according to claim 1 , wherein the second speaker is specified as the one of the first speakers stored in the second database having the highest calculated total value. 5. The speaker identification method according to claim 1 , wherein, in the executing of the learning mode processing, speaker models corresponding to the first speakers are newly created based on the specified plurality of unspecified speaker models and the acquired voice signals of the first speakers, and the created speaker models are associated with the first speakers and stored in a third database, and in the executing of the identification mode processing, for each first speaker, a third similarity degree between a feature value in the acquired voice signal of the second speaker and a feature value in the speaker model associated with the first speaker and stored in the third database is calculated, and one of the first speakers stored in the third database who corresponds to the second speaker is specified based on the calculated third similarity degrees. 6. The speaker identification method according to claim 5 , wherein, in a case where the second speaker is not specified as being any of the first speakers stored in the third database, the plurality of second similarity degrees between the feature value in the acquired voice signal of the second speaker and each feature value in the plurality of unspecified speaker models associated with the first speakers and stored in the second database are calculated for each of the first speakers, and the one of the first speakers stored in the second database who corresponds to the second speaker is specified based on the calculated plurality of second similarity degrees. 7. The speaker identification method according to claim 1 , wherein, after the identification mode processing has been performed, the first similarity degrees corresponding to each of the unspecified speaker models calculated in the learning mode processing and the second similarity degrees corresponding to each of the unspecified speaker models calculated in the identification mode processing are compared, and in a case where there is a prescribed number or more of the unspecified speaker models for which a difference between the first similarity degrees and the second similarity degrees is equal to or greater than a prescribed value, the learning mode processing is performed again. 8. The speaker identification method according to claim 1 , wherein, after the identification mode processing has been performed, the first similarity degrees corresponding to each of the unspecified speaker models calculated in the learning mode processing and the second similarity degrees corresponding to each of the unspecified speaker models calculated in the identification mode processing are compared, and in a case where there is a prescribed number or more of the unspecified speaker models for which a difference between the first similarity degrees and the second similarity degrees is equal to or greater than a prescribed value, the first similarity degrees corresponding to the unspecified speaker models stored in the second database for which the difference is equal to or greater than the prescribed value are amended to the second similarity degrees calculated in the identification mode processing. 9. A speaker identification device comprising: a processor; and a memory that stores a program, wherein the program causes the processor to execute a learning mode processing using a first database, in which a plurality of unspecified speakers and a plurality of unspecified speaker models obtained by modeling features of voices of the plurality of unspecified speakers are associated and stored, to create a second database, in which first speakers who are not stored in the first database and a plurality of the unspecified speaker models are associated and stored and execute an identification mode processing using the second database to identify a second speaker, wherein, in the execution of the learning mode processing, a voice signal of each of the first speakers is acquired, first similarity degrees between a feature value in the voice signal of each of the first speakers acquired by the first voice acquirer and each feature value in the plurality of unspecified speaker models stored in the first database are calculated, a plurality of the unspecified speaker models for which the first similarity degrees calculated by the first similarity degree calculator are equal to or greater than a prescribed value are specified, and each of the first speakers and the plurality of unspecified speaker models specified by the first specifier in the second database are associated and stored in the second database, and in the execution of the identification mode processing, a voice signal of the second speaker is acquired, a plurality of s
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