A saliency-based approach to audio event detection and summarization

Athanasia Zlatintsi, P. Maragos, A. Potamianos, Georgios Evangelopoulos
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引用次数: 22

Abstract

In this paper, we approach the problem of audio summarization by saliency computation of audio streams, exploring the potential of a modulation model for the detection of perceptually important audio events based on saliency models, along with various fusion schemes for their combination. The fusion schemes include linear, adaptive and nonlinear methods. A machine learning approach, where training of the features is performed, was also applied for the purpose of comparison with the proposed technique. For the evaluation of the algorithm we use audio data taken from movies and we show that nonlinear fusion schemes perform best. The results are reported on the MovSum database, using objective evaluations (against ground-truth denoting the perceptually important audio events). Analysis of the selected audio segments is also performed against a labeled database in respect to audio categories, while a method for fine-tuning of the selected audio events is proposed.
基于显著性的音频事件检测与总结方法
在本文中,我们通过音频流的显著性计算来解决音频摘要问题,探索了基于显著性模型的调制模型的潜力,用于检测感知上重要的音频事件,以及它们组合的各种融合方案。融合方案包括线性、自适应和非线性三种。还应用了一种机器学习方法,其中执行特征训练,目的是与提议的技术进行比较。为了对算法进行评估,我们使用了取自电影的音频数据,结果表明非线性融合方案效果最好。结果在MovSum数据库中报告,使用客观评估(针对表示感知上重要的音频事件的ground-truth)。对所选音频片段的分析也针对音频类别的标记数据库执行,同时提出了对所选音频事件进行微调的方法。
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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