Recurrence quantification analysis features for environmental sound recognition

Gerard Roma, Waldo Nogueira, P. Herrera
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引用次数: 52

Abstract

This paper tackles the problem of feature aggregation for recognition of auditory scenes in unlabeled audio. We describe a new set of descriptors based on Recurrence Quantification Analysis (RQA), which can be extracted from the similarity matrix of a time series of audio descriptors. We analyze their usefulness for environmental audio recognition combined with traditional feature statistics in the context of the AASP D-CASE[1] challenge. Our results show the potential of non-linear time series analysis techniques for dealing with environmental sounds.
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环境声音识别的递归量化分析特征
本文研究了未标记音频中听觉场景识别的特征聚合问题。本文基于递归量化分析(RQA),从音频描述符时间序列的相似度矩阵中提取了一组新的描述符。在AASP D-CASE[1]挑战的背景下,我们分析了它们与传统特征统计相结合对环境音频识别的有用性。我们的结果显示了非线性时间序列分析技术在处理环境声音方面的潜力。
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