Large-scale audio feature extraction and SVM for acoustic scene classification

Jürgen T. Geiger, Björn Schuller, G. Rigoll
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引用次数: 123

Abstract

This work describes a system for acoustic scene classification using large-scale audio feature extraction. It is our contribution to the Scene Classification track of the IEEE AASP Challenge on Detection and Classification of Acoustic Scenes and Events (D-CASE). The system classifies 30 second long recordings of 10 different acoustic scenes. From the highly variable recordings, a large number of spectral, cepstral, energy and voicing-related audio features are extracted. Using a sliding window approach, classification is performed on short windows. SVM are used to classify these short segments, and a majority voting scheme is employed to get a decision for longer recordings. On the official development set of the challenge, an accuracy of 73 % is achieved. SVM are compared with a nearest neighbour classifier and an approach called Latent Perceptual Indexing, whereby SVM achieve the best results. A feature analysis using the t-statistic shows that mainly Mel spectra are the most relevant features.
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大规模音频特征提取与支持向量机声学场景分类
本文描述了一个基于大规模音频特征提取的声学场景分类系统。这是我们对IEEE AASP声学场景和事件的检测和分类挑战(D-CASE)的场景分类轨道的贡献。该系统对10个不同的声学场景的30秒长的录音进行分类。从高度可变的录音中,提取了大量的频谱、倒谱、能量和语音相关的音频特征。使用滑动窗口方法,对短窗口进行分类。使用支持向量机对这些较短的录音片段进行分类,并采用多数投票方案对较长的录音片段进行决策。在挑战的官方开发集上,准确率达到了73%。SVM与最近邻分类器和一种称为潜在感知索引的方法进行了比较,其中SVM获得了最佳结果。使用t统计量进行特征分析表明,Mel谱是最相关的特征。
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