Content-based audio classification using collective network of binary classifiers

Toni Mäkinen, S. Kiranyaz, M. Gabbouj
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引用次数: 4

Abstract

In this paper, a novel collective network of binary classifiers (CNBC) framework is presented for content-based audio classification. The topic has been studied in several publications before, but in many cases the number of different classification categories is quite limited and needed to be fixed a priori. We focus our efforts to increase both the classification accuracy and the number of classes, as well as to create a scalable network design, which allows introducing new audio classes incrementally. The approach is based on dividing a major classification problem into several networks of binary classifiers (NBCs), where each NBC adapts its internal topology according to the classification problem at hand, by using evolutionary Artificial Neural Networks (ANNs). In the current work, feed-forward ANNs, or the so-called Multilayer Perceptrons (MLPs), are evolved within an architecture space, where a stochastic optimization is applied to seek for the optimal classifier configuration and parameters. The performance evaluations of the proposed framework over an 8-class benchmark audio database demonstrate its scalability and notable potential, as classification error rates of less than 9% are achieved.
基于内容的音频分类使用二元分类器的集体网络
本文提出了一种基于内容的音频分类的二元分类器集体网络(CNBC)框架。这个主题之前已经在一些出版物中进行了研究,但在许多情况下,不同分类类别的数量非常有限,需要先验地固定。我们专注于提高分类精度和类的数量,以及创建一个可扩展的网络设计,允许逐步引入新的音频类。该方法基于将一个主要分类问题划分为几个二元分类器(NBC)网络,其中每个NBC根据手头的分类问题调整其内部拓扑,使用进化人工神经网络(ann)。在目前的工作中,前馈人工神经网络,或所谓的多层感知器(mlp),在一个架构空间中进化,其中应用随机优化来寻求最佳分类器配置和参数。在8类基准音频数据库上的性能评估表明,该框架具有可扩展性和显著的潜力,分类错误率低于9%。
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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