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Voice command system based on pipelining classifiers GMM-HMM

机译:基于流水线分类器的语音命令系统GMM-HMM

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摘要

Details of designing and developing a voice guiding system for a robot arm is presented. The features combination technique is investigated and then a hybrid method for classification is applied. Based on research and experimental results, more features will increase the rate of recognition in automatic speech recognition. Thus combining classical components used in ASR system such as Crossing Zero, energy, Mel frequency cepstral coefficients with wavelet transform (to extract meaningful formants parameters) followed by a pipelining ordered classifiers GMM and HMM has contributed in reducing the error rate considerably. To implement the approach on a real-time application, a PC interface was designed to control the movements of a four degree of freedom robot arm by transmitting the orders via RF circuits. The voice command system for the robot is designed and tests showed an Improvement by combining techniques.
机译:介绍了设计和开发用于机器人手臂的语音导航系统的详细信息。研究了特征组合技术,然后应用了一种混合分类方法。根据研究和实验结果,更多功能将提高自动语音识别中的识别率。因此,将ASR系统中使用的经典组件(例如零交叉,能量,梅尔频率倒谱系数)与小波变换(以提取有意义的共振峰参数)相结合,然后再使用流水线排序的分类器GMM和HMM有助于显着降低错误率。为了在实时应用上实现该方法,设计了一个PC接口,以通过RF电路发送指令来控制四自由度机械臂的运动。设计了机器人的语音命令系统,并通过结合技术对测试进行了改进。

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