Audio Classification of Low Feature Spectrograms Utilizing Convolutional Neural Networks

Noel Elias
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Abstract

Modern day audio signal classification techniques lack the ability to classify low feature audio signals in the form of spectrographic temporal frequency data representations. Additionally, currently utilized techniques rely on full diverse data sets that are often not representative of real-world distributions. This paper derives several first-of-its-kind machine learning methodologies to analyze these low feature audio spectrograms given data distributions that may have normalized, skewed, or even limited training sets. In particular, this paper proposes several novel customized convolutional architectures to extract identifying features using binary, one-class, and siamese approaches to identify the spectrographic signature of a given audio signal. Utilizing these novel convolutional architectures as well as the proposed classification methods, these experiments demonstrate state-of-the-art classification accuracy and improved efficiency than traditional audio classification methods.
基于卷积神经网络的低特征谱图音频分类
现代音频信号分类技术缺乏以频谱时间频率数据表示形式对低特征音频信号进行分类的能力。此外,目前使用的技术依赖于完全不同的数据集,这些数据集通常不能代表现实世界的分布。本文提出了几种首创的机器学习方法来分析这些低特征音频频谱图,这些数据分布可能具有规范化、偏斜甚至有限的训练集。特别是,本文提出了几种新的自定义卷积架构,以使用二进制,一类和连体方法提取识别特征,以识别给定音频信号的频谱签名。利用这些新颖的卷积架构和提出的分类方法,这些实验证明了最先进的分类精度和效率比传统的音频分类方法。
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