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arxiv:2512.17648

Simulstream: Open-Source Toolkit for Evaluation and Demonstration of Streaming Speech-to-Text Translation Systems

Published on Dec 19
· Submitted by
Sara Papi
on Dec 24
Authors:
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Abstract

A new open-source framework, simulstream, is introduced for evaluating and demonstrating streaming speech-to-text translation systems, supporting both incremental decoding and re-translation methods with a focus on long-form audio processing.

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Streaming Speech-to-Text Translation (StreamST) requires producing translations concurrently with incoming speech, imposing strict latency constraints and demanding models that balance partial-information decision-making with high translation quality. Research efforts on the topic have so far relied on the SimulEval repository, which is no longer maintained and does not support systems that revise their outputs. In addition, it has been designed for simulating the processing of short segments, rather than long-form audio streams, and it does not provide an easy method to showcase systems in a demo. As a solution, we introduce simulstream, the first open-source framework dedicated to unified evaluation and demonstration of StreamST systems. Designed for long-form speech processing, it supports not only incremental decoding approaches, but also re-translation methods, enabling for their comparison within the same framework both in terms of quality and latency. In addition, it also offers an interactive web interface to demo any system built within the tool.

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Already available on PyPi at https://pypi.org/project/simulstream/

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