Classifying audio of movies by a multi-expert system

M. D. Santo, G. Percannella, Carlo Sansone, M. Vento
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引用次数: 10

Abstract

The paper presents a system for the automatic MPEG format. In contrast to the approaches proposed up to now, it employs a multi-expert classification system arranged according to a multi-stage architecture. The system is able to recognize not only four pure classes (music, speech, silence and noise) but also confused audio signals, such as the ones resulting from the overlap of pure audio components (for example, speech overlapped with music or noise, etc.). An extensive experimental analysis has been carried on a large audio database extracted from about 30 moving pictures recorded on low-quality magnetic media. Results confirm the effectiveness of the approach, with an average improvement of about 45% with respect to single classifier solutions.
基于多专家系统的电影音频分类
本文介绍了一个自动生成MPEG格式的系统。与目前提出的方法相比,该方法采用多专家分类系统,按照多阶段体系结构进行分类。该系统不仅能够识别四种纯粹的音频信号(音乐、语音、静音和噪声),还能够识别混淆的音频信号,例如纯音频成分重叠产生的音频信号(例如语音与音乐或噪声重叠等)。对从低质量磁介质上录制的约30幅运动图像中提取的大型音频数据库进行了广泛的实验分析。结果证实了该方法的有效性,相对于单一分类器解决方案,平均提高了约45%。
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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