Investigating the Important Temporal Modulations for Deep-Learning-Based Speech Activity Detection

Tyler Vuong, Nikhil Madaan, Rohan Panda, R. Stern
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引用次数: 1

Abstract

We describe a learnable modulation spectrogram feature for speech activity detection (SAD). Modulation features capture the temporal dynamics of each frequency subband. We compute learnable modulation spectrogram features by first calculating the log-mel spectrogram. Next, we filter each frequency subband with a bandpass filter that contains a learnable center frequency. The resulting SAD system was evaluated on the Fearless Steps Phase-04 SAD challenge. Experimental results showed that temporal modulations around the 4–6 Hz range are crucial for deep-learning-based SAD. These experimental results align with previous studies that found slow temporal modulation to be most important for speech-processing tasks and speech intelligibility. Additionally, we found that the learnable modulation spectrogram feature outperforms both the standard log-mel and fixed modulation spectrogram features on the Fearless Steps Phase-04 SAD test set.
研究基于深度学习的语音活动检测的重要时间调制
我们描述了一种用于语音活动检测(SAD)的可学习调制谱特征。调制特性捕获每个频率子带的时间动态。我们首先通过计算对数谱图来计算可学习的调制谱图特征。接下来,我们用包含可学习中心频率的带通滤波器滤波每个频率子带。由此产生的SAD系统在Fearless Steps Phase-04 SAD挑战中进行了评估。实验结果表明,4-6 Hz范围内的时间调制对于基于深度学习的SAD至关重要。这些实验结果与先前的研究一致,发现慢时间调制对语音处理任务和语音可理解性最重要。此外,我们发现在Fearless Steps Phase-04 SAD测试集上,可学习的调制谱图特征优于标准对数和固定调制谱图特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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