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Optimize Approach to Voice Recognition Using IoT

机译:使用物联网优化语音识别的方法

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摘要

Verbal communication is one of the best way to behaviors of proclamation for humans, to give and take thought, feeling and relevant data. Speech is the most capable way to teach a device or talk with a device. Detection systems lies on hidden Markov models is doing well less than exacting situation, due to experience as of chief limitations that maximum value of applications of ASR technology in real-world surroundings. However, with in the past decade, several attempt includes to estimate the HMM deficiency. Artificial Neural Networks (ANN) and more specifically Multi-Layer Perception's (MLP) appeared to be a promising alternative in this respect to replace or help HMM in the classification mode. Algorithms are applied to reduce the noise interference and silence suppression. The signal free from above interference is then processed to extract the features. MFCC is used as a feature extraction technique. It will be applied through raspberry pi to device like FAN, BULB through cloud.
机译:口头沟通是人类宣传行为的最佳方式之一,提供思想,感觉和相关数据。语音是教授设备或与设备交谈的最有能力的方法。检测系统在隐藏的马尔可夫模型上呈现出较好的情况,这是由于ASR技术在真实世界环境中ASR技术应用的最大值的经验。然而,随着在过去的十年中,几次尝试包括估计嗯缺乏。人工神经网络(ANN)和更具体地的多层感知(MLP)似乎是在这方面是在分类模式中替换或帮助HMM的有前途的替代方案。应用算法以降低噪声干扰和沉默抑制。然后处理没有上述干扰的信号以提取该特征。 MFCC用作特征提取技术。它将通过覆盆子PI应用于风扇,灯泡通过云等设备。

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