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Dynamic and scalable audio classification by collective network of binary classifiers framework: An evolutionary approach

机译:通过二进制分类器框架的集合网络进行动态和可伸缩的音频分类:一种进化方法

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摘要

In this paper, we propose a novel framework based on a collective network of evolutionary binary classifiers (CNBC) to address the problems of feature and class scalability. The main goal of the proposed framework is to achieve a high classification performance over dynamic audio and video repositories. The proposed framework adopts a "Divide and Conquer" approach in which an individual network of binary classifiers (NBC) is allocated to discriminate each audio class. An evolutionary search is applied to find the best binary classifier in each NBC with respect to a given criterion. Through the incremental evolution sessions, the CNBC framework can dynamically adapt to each new incoming class or feature set without resorting to a full-scale re-training or re-configuratioh. Therefore, the CNBC framework is particularly designed for dynamically varying databases where no conventional static classifiers can adapt to such changes. In short, it is entirely a novel topology, an unprecedented approach for dynamic, content/data adaptive and scalable audio classification. A large set of audio features can be effectively used in the framework, where the CNBCs make appropriate selections and combinations so as to achieve the highest discrimination among individual audio classes. Experiments demonstrate a high classification accuracy (above 90%) and efficiency of the proposed framework over large and dynamic audio databases.
机译:在本文中,我们提出了一个基于进化二进制分类器(CNBC)的集体网络的新颖框架,以解决特征和类可伸缩性的问题。提出的框架的主要目标是在动态音频和视频存储库上实现高分类性能。提出的框架采用“分而治之”的方法,其中分配了一个单独的二进制分类器网络(NBC)来区分每个音频类别。进行进化搜索以针对给定标准在每个NBC中找到最佳二元分类器。通过增量演化会话,CNBC框架可以动态地适应每个新的传入类或功能集,而无需进行全面的重新训练或重新配置。因此,CNBC框架是专门为动态变化的数据库设计的,在该数据库中常规的静态分类器无法适应这种变化。简而言之,它完全是一种新颖的拓扑,是动态,内容/数据自适应和可伸缩音频分类的前所未有的方法。可以在框架中有效使用大量音频功能,其中CNBC进行适当的选择和组合,以实现各个音频类别之间的最高区分度。实验表明,在大型动态音频数据库上,该框架具有很高的分类精度(超过90%)和效率。

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