Meetings are an essential form of communication for all types of organizations, and remote collaboration systems have been much more widely used since the COVID-19 pandemic. One major issue with remote meetings is that it is challenging for remote participants to interrupt and speak. We have recently developed the first speech interruption analysis model, which detects failed speech interruptions, shows very promising performance, and is being deployed in the cloud. To deliver this feature in a more cost-efficient and environment-friendly way, we reduced the model complexity and size to ship the WavLM_SI model in client devices. In this paper, we first describe how we successfully improved the True Positive Rate (TPR) at a 1% False Positive Rate (FPR) from 50.9% to 68.3% for the failed speech interruption detection model by training on a larger dataset and fine-tuning. We then shrank the model size from 222.7 MB to 9.3 MB with an acceptable loss in accuracy and reduced the complexity from 31.2 GMACS (Giga Multiply-Accumulate Operations per Second) to 4.3 GMACS. We also estimated the environmental impact of the complexity reduction, which can be used as a general guideline for large Transformer-based models, and thus make those models more accessible with less computation overhead.
翻译:自COVID-19大流行以来,远程合作系统被广泛广泛使用,是各类组织的基本交流形式,远程合作系统是所有类型组织的基本交流形式,自COVID-19大流行以来,远程会议的一个主要问题是,对远程参与者来说,干扰和发言是一个挑战性的问题。我们最近开发了第一个语音中断分析模型,该模型检测出失败的语音中断中断,显示非常有希望的性能,并正在云中部署。为了以更具有成本效益和环境友好的方式实现这一特征,我们降低了模型的复杂性和规模,将WavLM_SI模型运到客户设备中。我们首先描述了我们如何成功地将真实正正率从50.9%提高到68.3%,通过对更大的数据集和微调培训,检测失败的语音中断检测模型。我们然后将模型大小从222.7MB降至9.3MB,其准确性损失可接受,并将复杂性从31.2 Giga Multiply-Accluting Afforation Afforation peration in sicondiclist asive supide.