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An Empirical Study of Cross-Lingual Transfer Learning Techniques for Small-Footprint Keyword Spotting

机译:小脚印关键词发现的跨语言迁移学习技术的实证研究

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This paper presents our work on building a small-footprint keyword spotting system for a resource-limited language, which requires low CPU, memory and latency. Our keyword spotting system consists of deep neural network (DNN) and hidden Markov model (HMM), which is a hybrid DNN-HMM decoder. We investigate different transfer learning techniques to leverage knowledge and data from a resource-abundant source language to improve the keyword DNN training for a target language which has limited in-domain data. The approaches employed in this paper include training a DNN using source language data to initialize the target language DNN training, mixing data from source and target languages together in a multi-task DNN training setup, using logits computed from a DNN trained on the source language data to regularize the keyword DNN training in the target language, as well as combinations of these techniques. Given different amounts of target language training data, our experimental results show that these transfer learning techniques successfully improve keyword spotting performance for the target language, measured by the area under the curve (AUC) of DNN-HMM decoding detection error tradeoff (DET) curves using a large in-house far-field test set.
机译:本文介绍了我们针对资源有限的语言构建占用空间小的关键字查找系统的工作,该系统需要较低的CPU,内存和延迟。我们的关键字搜寻系统由深度神经网络(DNN)和隐马尔可夫模型(HMM)组成,后者是DNN-HMM混合解码器。我们研究了不同的转移学习技术,以利用资源丰富的源语言中的知识和数据来改善目标DDomain关键字的训练,该DNN训练的目标语言域内数据有限。本文采用的方法包括使用源语言数据训练DNN来初始化目标语言DNN训练,在多任务DNN训练设置中混合使用源语言和目标语言的数据,并使用在源语言上训练过的D​​NN计算得出的对数数据以规范目标语言中的关键字DNN训练,以及这些技术的组合。在给定不同数量的目标语言训练数据的情况下,我们的实验结果表明,这些转移学习技术成功地改善了目标语言的关键字识别性能,方法是通过DNN-HMM解码检测误差折衷(DET)曲线的曲线下面积(AUC)来衡量使用大型的内部远场测试仪。

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