鲁棒重叠语音检测及其在Prof-Life-Log数据词数估计中的应用

Navid Shokouhi, A. Ziaei, A. Sangwan, J. Hansen
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引用次数: 19

摘要

估计一个人在一定时间内说的单词数量的能力在第二语言习得、医疗保健和评估语言发展方面是有价值的。然而,在现实/自然的场景中,建立一个强大的自动框架来实现高精度是非常重要的,因为各种因素,如不同风格的对话或录音中出现的噪音类型,特别是在多方对话中。在这项研究中,我们提出了一种噪声鲁棒的重叠语音检测算法来估计给定音频文件中存在环境噪声的重叠语音的可能性。该信息被嵌入到单词计数估计器中,该估计器使用线性最小均方估计器(LMMSE)根据音节率预测单词数。音节检测使用修改版本的mrate算法。提出的单词计数估计器在Prof-Life-Log语料库中的长时间文件上进行了测试。使用LENA记录设备记录数据,该设备由主扬声器在各种环境和不同噪声条件下佩戴。在噪声条件下,重叠检测系统的性能明显优于基线。此外,将重叠检测结果应用于单词计数估计比我们之前的工作(包括使用谱减法和沉默去除的语音增强)实现了35%的相对改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust overlapped speech detection and its application in word-count estimation for Prof-Life-Log data
The ability to estimate the number of words spoken by an individual over a certain period of time is valuable in second language acquisition, healthcare, and assessing language development. However, establishing a robust automatic framework to achieve high accuracy is non-trivial in realistic/naturalistic scenarios due to various factors such as different styles of conversation or types of noise that appear in audio recordings, especially in multi-party conversations. In this study, we propose a noise robust overlapped speech detection algorithm to estimate the likelihood of overlapping speech in a given audio file in the presence of environment noise. This information is embedded into a word-count estimator, which uses a linear minimum mean square estimator (LMMSE) to predict the number of words from the syllable rate. Syllables are detected using a modified version of the mrate algorithm. The proposed word-count estimator is tested on long duration files from the Prof-Life-Log corpus. Data is recorded using a LENA recording device, worn by a primary speaker in various environments and under different noise conditions. The overlap detection system significantly outperforms baseline performance in noisy conditions. Furthermore, applying overlap detection results to word-count estimation achieves 35% relative improvement over our previous efforts, which included speech enhancement using spectral subtraction and silence removal.
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