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[Speech/Voice recognition/combinemelcepst

Description: 求mel频率倒谱系数的matlab程序-for mel frequency cepstrum coefficients of Matlab procedures
Platform: | Size: 2048 | Author: wh | Hits:

[Speech/Voice recognition/combinemfcc

Description: mfcc mel倒谱系数学习。适合语音识别参数的学习。-mfcc mel cepstral coefficient learning. Parameters for speech recognition learning.
Platform: | Size: 1024 | Author: 沈立金 | Hits:

[Speech/Voice recognition/combinemfcc

Description: 一些有用的MATLAB编写的MFCC算法的代码。-Some useful codes for Mel-Frequency Cepstral Coefficients Algorithm, Writed by Matlab.
Platform: | Size: 453632 | Author: 郑豪 | Hits:

[Speech/Voice recognition/combinemfcc

Description: 这是基于matlab的关于Mel频率倒谱系数(MelFrequencyCepstrumCoefficient,MFCC)的代码,对大家理解有一定帮助。-This is based on the matlab Mel Frequency Cepstral Coefficients (MelFrequencyCepstrumCoefficient, MFCC) code for us to understand some help.
Platform: | Size: 1024 | Author: 123 | Hits:

[Audio programmfcc

Description: 语音识别MFCC特征提取matlab代码。 「梅尔倒频谱系数」(Mel-scale Frequency Cepstral Coefficients,简称MFCC),是最常用到的语音特征,此参数考虑到人耳对不同频率的感受程度,因此特别适合用在语音辨识。-Speech recognition MFCC feature extraction matlab code. \ Mel cepstrum coefficient (Mel- scale Frequency Cepstral Coefficients, MFCC), is the most commonly used to the phonetic characteristics of this parameter given ear to the feelings of different frequencies, so especially suitable for use in speech recognition
Platform: | Size: 1024 | Author: Katherine | Hits:

[Embeded-SCM DevelopSTM32-Speech-Recognition-Master

Description: 于市售 STM32 开发板上实现特定人语音识别处理项目。识别流程是:预滤波、ADC、分帧、端点检测、预加重、加窗、特征提取、特征匹配。端点检测(VAD)采用短时幅度和短时过零率相结合。检测出有效语音后,根据人耳听觉感知特性,计算每帧语音的 Mel 频率倒谱系数(MFCC)。然后采用动态时间弯折(DTW)算法与特征模板相匹配,最终输出识别结果。先用Matlab对上述算法进行仿真,经数次试验求得算法内所需各系数的最优值。而后将算法移植到 STM32 开发板上,移植过程中根据 STM32 上存储空间相对较小、计算能力也相对较弱的实际情况,对算法进行优化。最终完成于 STM32 微处理器上的特定人语音识别系统。-Implement speech recognition processing project in commercially available STM32 development board. Identification is the process: pre-filter, ADC, framing, endpoint detection, pre-emphasis, windowing, feature extraction, feature matching. Endpoint detection (VAD) short-time amplitude and short-term zero rate combined. After detecting an effective voice, according to the characteristics of human auditory perception, calculated for each frame of speech Mel Frequency Cepstral Coefficients (MFCC). Then dynamic time warping (DTW) algorithm and feature template matches the final output recognition result. First with Matlab simulation algorithm described above, after several trials to get the optimal value of each coefficient within the desired algorithm. The algorithm will migrate to STM32 development board, the porting process according to the STM32 relatively small storage space, computing power is relatively weak situation of the optimization algorithm. Finally completed on the STM32 micr
Platform: | Size: 325632 | Author: Chenkly | Hits:

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