Speaker Disentanglement of Speech Pre-trained Model Based on Interpretability (2507.17851v1)
Abstract: Speech pretrained models contain task-specific information across different layers, but decoupling content and timbre information remains challenging as removing speaker-specific information often causes content loss. Current research lacks direct metrics to quantify timbre residual in model encodings, relying on indirect evaluation through downstream tasks. This paper addresses these challenges through interpretability-based speaker disentanglement in speech pretraining models. We quantitatively evaluate timbre residual in model embeddings and improve speaker disentanglement using interpretive representations. Our contributions include: (1) InterpTRQE-SptME Benchmark - a timbre residual recognition framework using interpretability. The benchmark concatenates content embeddings with timbre embeddings for speaker classification, then applies Gradient SHAP Explainer to quantify timbre residual. We evaluate seven speech pretraining model variations. (2) InterpTF-SptME method - an interpretability-based timbre filtering approach using SHAP Noise and SHAP Cropping techniques. This model-agnostic method transforms intermediate encodings to remove timbre while preserving content. Experiments on VCTK dataset with HuBERT LARGE demonstrate successful content preservation and significant speaker disentanglement optimization. Results show the SHAP Noise method can reduce timbre residual from 18.05% to near 0% while maintaining content integrity, contributing to enhanced performance in content-related speech processing tasks and preventing timbre privacy leakage.
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