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Sound Classification Algorithms for Indoor Human Activities

机译:室内人类活动的声音分类算法

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The goal of this paper is to perform a comparison on different classification algorithms applied on Mel-Frequency Cepstral Coefficients and Moving Picture Experts Group-7 features in order to obtain a high average correct classification rate, greater than 98%, and a low computation time, less than 1 minute, for audio classification purposes in the case of audio signals from service robots. The highest correct classification rates are obtained using the Linear Discriminant Analysis for classification phase. For Mel-Frequency Cepstral Coefficients the averaged accuracy is 99.78%, using 64 features, and the classification computation time is 5.26 seconds. For Moving Picture Experts Group-7 features the averaged accuracy is 99,65%, with a classification computation time of 5.30 seconds.
机译:本文的目标是对应用于熔融频率谱系数的不同分类算法进行比较,并且运动图像专家组-7特征,以获得高于98%的高平均分类率,以及低计算时间 ,小于1分钟,用于音频分类目的,在服务机器人的音频信号的情况下。 使用对分类阶段的线性判别分析获得最高的正确分类速率。 对于熔融频率抗肌射潮系数,平均精度为99.78%,使用64个功能,分类计算时间为5.26秒。 对于运动图像专家组-7特性平均精度为99,65%,分类计算时间为5.30秒。

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