语音分类与有背景音乐的语音

Mrinmoy Bhattacharjee, S. Prasanna, P. Guha
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引用次数: 1

摘要

对包含背景音乐的语音进行增强的应用程序需要一个关键的预处理步骤来有效地检测这些片段。本研究提出了这样一种预处理方法来检测背景音乐在不同信噪比水平下的混合语音。本文提出了一种词袋方法。首先学习语音和音乐数据中的代表性词典。信号以1s间隔的谱图处理。这些谱图被用来学习单独的语音和音乐词典。这项工作提出了一种加权方案,通过抑制一类与另一类具有相似性的码字来减少混淆。所提出的特征是从学习字典中获得的15个音频间隔的加权直方图。使用深度神经网络分类器进行分类。提出的方法在两个公开可用的数据集上对基线和基准进行了验证。所提出的特性显示了有希望的结果,无论是单独还是与基线结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Speech vs. Speech with Background Music
Applications that perform enhancement of speech containing background music require a critical preprocessing step that can efficiently detect such segments. This work proposes such a preprocessing method to detect speech with background music that is mixed at different SNR levels. A bag-of-words approach is proposed in this work. Representative dictionaries from speech and music data are first learned. The signals are processed as spectrograms of 1s intervals. Rows of these spectrograms are used to learn separate speech and music dictionaries. This work proposes a weighting scheme to reduce confusion by suppressing codewords of one class that have similarities to the other class. The proposed feature is a weighted histogram of 1s audio intervals obtained from the learned dictionaries. The classification is performed using a deep neural network classifier. The proposed approach is validated against a baseline and benchmarked over two publicly available datasets. The proposed feature shows promising results, both individually and in combination with the baseline.
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