Performance Analysis: AI-based VIST Audio Player by Microsoft Speech API

R. Ibrahim
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Abstract

Speech recognition has gained much attention from researchers for almost last two decades. Isolated words, connected words, and continuous speech are the main focused areas of speech recognition. Researchers have adopted many techniques to solve speech recognition challenges under the umbrella of Artificial Intelligence (AI), Pattern Recognition and Acoustic Phonetic approaches. Variation in pronunciation of words, individual accents, unwanted ambient noise, speech context, and quality of input devices are some of these challenges in speech recognition. Many Application Programming Interface (API)s are developed to overcome the issue of accuracy in a speech-to-text conversion such as Microsoft Speech API and Google Speech API. In this paper, the performance of Microsoft Speech API is analyzed against other Speech APIs mentioned in the literature on the special dataset (without background noise) prepared. A Voice Interactive Speech to Text (VIST) audio player was developed for the analysis of Microsoft Speech API. VIST audio player creates runtime subtitles of the audio files running on it; the player is responsible for speech to text conversion in real-time. Microsoft Speech API was incorporated in the application to validate and make the performance of API measurable. The experiments proved the Microsoft Speech API more accurate with respect to other APIs in the context of the prepared dataset for the VIST audio player. The accuracy rate according to the precision-recall is 96% for Microsoft Speech API, which is better than previous ones as mentioned in the literature.
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性能分析:基于微软语音API的基于ai的VIST音频播放器
近二十年来,语音识别受到了研究人员的广泛关注。孤立词、连接词和连续语音是语音识别的主要研究领域。在人工智能(AI)、模式识别和声学语音方法的保护下,研究人员采用了许多技术来解决语音识别的挑战。单词发音的变化、个人口音、不需要的环境噪声、语音上下文和输入设备的质量是语音识别中的一些挑战。开发了许多应用程序编程接口(API)来克服语音到文本转换中的准确性问题,例如Microsoft Speech API和谷歌Speech API。本文在准备好的特殊数据集(无背景噪声)上,对比文献中提到的其他Speech API对Microsoft Speech API的性能进行了分析。为分析微软语音API,开发了语音交互语音转文本(VIST)音频播放器。VIST音频播放器创建运行在它上面的音频文件的运行时字幕;玩家负责实时的语音到文本的转换。在应用程序中加入了微软语音API,以验证和测量API的性能。实验证明,在准备好的VIST音频播放器数据集的背景下,Microsoft Speech API相对于其他API更准确。根据precision-recall, Microsoft Speech API的准确率为96%,优于之前文献中提到的。
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审稿时长
12 weeks
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