Speech-Aware Long Context Pruning and Integration for Contextualized Automatic Speech Recognition
Abstract
Automatic speech recognition (ASR) systems have achieved remarkable performance in common conditions but often struggle to leverage long-context information in contextualized scenarios that require domain-specific knowledge, such as conference presentations. This challenge arises primarily due to constrained model context windows and the sparsity of relevant information within extensive contextual noise. To solve this, we propose the SAP method, a novel framework that dynamically prunes and integrates relevant contextual keywords in two stages. Specifically, each stage leverages our proposed Speech-Driven Attention-based Pooling mechanism, enabling efficient compression of context embeddings while preserving speech-salient information. Experimental results demonstrate state-of-the-art performance of SAP on the SlideSpeech and LibriSpeech datasets, achieving word error rates (WER) of 7.71% and 1.12%, respectively. On SlideSpeech, our method notably reduces biased keyword error rates (B-WER) by 41.1% compared to non-contextual baselines. SAP also exhibits robust scalability, consistently maintaining performance under extensive contextual input conditions on both datasets.
Cite
@article{arxiv.2511.11139,
title = {Speech-Aware Long Context Pruning and Integration for Contextualized Automatic Speech Recognition},
author = {Yiming Rong and Yixin Zhang and Ziyi Wang and Deyang Jiang and Yunlong Zhao and Haoran Wu and Shiyu Zhou and Bo Xu},
journal= {arXiv preprint arXiv:2511.11139},
year = {2026}
}