Improving speaker turn embedding by crossmodal transfer learning from face embedding
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This study focuses on the protection of soft-biometric attributes related to the demographic information of individuals that can be extracted from compact representations of face images, called embeddings. We consider a state-ofthe-art technology for soft- ...
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