CoLMbo: Speaker Language Model for Descriptive Profiling
- URL: http://arxiv.org/abs/2506.09375v2
- Date: Sat, 23 Aug 2025 19:55:31 GMT
- Title: CoLMbo: Speaker Language Model for Descriptive Profiling
- Authors: Massa Baali, Shuo Han, Syed Abdul Hannan, Purusottam Samal, Karanveer Singh, Soham Deshmukh, Rita Singh, Bhiksha Raj,
- Abstract summary: Speaker recognition systems are often limited to classification tasks and struggle to generate detailed speaker characteristics.<n>This paper introduces CoLMbo, a Speaker Language Model (SLM) that addresses these limitations by integrating a speaker encoder with prompt-based conditioning.<n>CoLMbo utilizes user-defined prompts to adapt dynamically to new speaker characteristics and provides customized descriptions.
- Score: 56.57669166980832
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Speaker recognition systems are often limited to classification tasks and struggle to generate detailed speaker characteristics or provide context-rich descriptions. These models primarily extract embeddings for speaker identification but fail to capture demographic attributes such as dialect, gender, and age in a structured manner. This paper introduces CoLMbo, a Speaker Language Model (SLM) that addresses these limitations by integrating a speaker encoder with prompt-based conditioning. This allows for the creation of detailed captions based on speaker embeddings. CoLMbo utilizes user-defined prompts to adapt dynamically to new speaker characteristics and provides customized descriptions, including regional dialect variations and age-related traits. This innovative approach not only enhances traditional speaker profiling but also excels in zero-shot scenarios across diverse datasets, marking a significant advancement in the field of speaker recognition.
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