AI RESEARCH
Spoken Language Identification with Pre-trained Models and Margin Loss
arXiv CS.CL
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ArXi:2605.01905v1 Announce Type: cross For the speaker-controlled spoken language identification task proposed in the TidyLang Challenge 2026, this paper proposes a language identification method based on pre-trained models and margin-based losses. The proposed method adopts a pre-trained ECAPA-TDNN as the feature encoder and incorporates margin-based losses to enhance the discriminative ability of language representations, thereby improving inter-class separability and reducing the interference of non-linguistic factors such as speaker characteristics.