Masked Proxy Loss For Text-Independent Speaker Verification
Jiachen Lian,
Aiswarya Vinod Kumar,
Hira Dhamyal
et al.
Abstract:Open-set speaker recognition can be regarded as a metric learning problem, which is to maximize inter-class variance and minimize intra-class variance. Supervised metric learning can be categorized into entity-based learning and proxybased learning 1 . Most of existing metric learning objectives like Contrastive, Triplet, Prototypical, GE2E, etc all belong to the former division, the performance of which is either highly dependent on sample mining strategy or restricted by insufficient label information in the… Show more
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