Analysis of Complex Non-Linear Environment Exploration in Speech Recognition by Hybrid Learning Technique

Dr. S. Manoharan
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引用次数: 22

Abstract

Recently, the application of voice-controlled interfaces plays a major role in many real-time environments such as a car, smart home and mobile phones. In signal processing, the accuracy of speech recognition remains a thought-provoking challenge. The filter designs assist speech recognition systems in terms of improving accuracy by parameter tuning. This task is some degree of form filter’s narrowed specifications which lead to complex nonlinear problems in speech recognition. This research aims to provide analysis on complex nonlinear environment and exploration with recent techniques in the combination of statistical-based design and Support Vector Machine (SVM) based learning techniques. Dynamic Bayes network is a dominant technique related to speech processing characterizing stack co-occurrences. This method is derived from mathematical and statistical formalism. It is also used to predict the word sequences along with the posterior probability method with the help of phonetic word unit recognition. This research involves the complexities of signal processing that it is possible to combine sentences with various types of noises at different signal-to-noise ratios (SNR) along with the measure of comparison between the two techniques.
混合学习技术在语音识别中的复杂非线性环境探索分析
近年来,语音控制界面的应用在汽车、智能家居、手机等实时环境中发挥着重要作用。在信号处理中,语音识别的准确性仍然是一个发人深省的挑战。滤波器设计通过参数调整帮助语音识别系统提高精度。该任务在一定程度上缩小了表单滤波器的规格,从而导致语音识别中出现复杂的非线性问题。本研究将基于统计的设计与基于支持向量机(SVM)的学习技术相结合,对复杂的非线性环境进行分析和探索。动态贝叶斯网络是语音处理技术中主要的堆栈共现特征分析技术。这种方法是从数学和统计的形式化推导出来的。并结合后验概率方法,借助音标单元识别进行词序列预测。本研究涉及到信号处理的复杂性,即可以以不同的信噪比(SNR)将不同类型的噪声与句子组合在一起,并测量两种技术之间的比较。
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