Diarization-Guided Qwen-ASR Adaptation for Multilingual Two-Speaker Conversational Speech
arXiv:2607.08208v1 Announce Type: new Abstract: This paper describes our self-designed system for Task 1 of the MLC-SLM 2026 Challenge for multilingual two-speaker conversational speech. The system…
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