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DHMM在机械设备音频识别中的应用
引用本文:苏鹏,程健. DHMM在机械设备音频识别中的应用[J]. 计算机工程与应用, 2015, 51(1): 266-270
作者姓名:苏鹏  程健
作者单位:中国科学技术大学 自动化系,合肥 230027
摘    要:为了对现场机械或设备进行监控、诊断和识别,以音频为监控手段,引入矢量量化(VQ)算法并建立机械设备音频的离散隐Markov模型(DHMM)。特征参数采用MFCC,码书设计采用Linde-Buzo-Gray(LBG)算法;推导出Baum-Welch算法参数重估的多观察序列的最简标定形式;分析了多种HMM类型,提出了适合机械设备音频的HMM。实验在22种音频中进行,识别准确率在97%以上,证明了方法的有效性。

关 键 词:Mel倒谱系数(MFCC)  矢量量化  LBG算法  隐马尔科夫模型  音频识别  设备监控  

Application of DHMM to mechanical equipment audio recognition
SU Peng,CHENG Jian. Application of DHMM to mechanical equipment audio recognition[J]. Computer Engineering and Applications, 2015, 51(1): 266-270
Authors:SU Peng  CHENG Jian
Affiliation:Department of Automation, University of Science and Technology of China, Hefei 230027, China
Abstract:In order to monitor, diagnose and identify the machinery or equipment, the audio signal is used as the monitoring means, and the Vector Quantization(VQ) algorithm is introduced, also mechanical equipment’s Discrete Hidden Markov Model(DHMM) is established. The mechanical equipment audio parameter extracted is MFCC, and the code book is produced using Linde-Buzo-Gray(LBG) algorithm. The Baum-Welch algorithm’s simplest scaling factor form based on multiple sequences is deduced. Meanwhile logarithmic form of Viterbi algorithm is used. Various forms of HMM model are compared through the experiments, and the suitable audio HMM model form for mechanical equipment is chosen. The experiments on 22 kinds of audio signals, with the recognition accuracy rate of more than 97%, prove the validity of the method.
Keywords:Mel Frequency Cepstrum Coefficient(MFCC)  Vector Quantization(VQ)  Linde-Buzo-Gray(LBG)algorithm  Discrete Hidden Markov Model(DHMM)  audio recognition  equipment monitoring
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