Dania Maryam Waqar, T. Gunawan, Malik Morshidi, M. Kartiwi
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引用次数: 7
摘要
语音情感识别(SER)由于其在几乎所有可用领域的广泛应用而越来越受欢迎。过去的工作是在具有各种提取特征的大规模处理板上完成的。针对SER系统提出了许多不同的方法,但在大小、复杂性或识别准确性方面都存在不足。由于规模和资源的限制,设计一个能够克服这些缺点的系统变得势在必行。解决方案是设计一个小型、精确和经济的系统。使用微型机器学习和SER是最好的解决方案,因为它可以在小规模和相对较高的情绪识别率上完成。本文介绍了过去的工作,硬件,软件和SER原型的现场设计,重点是检测愤怒情绪的变化。为实现Arduino Nano 33 BLE Sense,开发了一种简单而优化的CNN架构。原型验证表明,我们的系统可以检测出不生气、即将生气和生气的情绪。
Design of a Speech Anger Recognition System on Arduino Nano 33 BLE Sense
Speech Emotion Recognition (SER) has gained growing popularity due to its wide applications in almost every available field. Past work has been done on large-scale processing boards with a variety of extracted features. Many different methods have been proposed for the SER system but have lacked aspects in either size, complexity, or recognition accuracy. Due to limitations on size and resources, designing a system that can overcome these drawbacks becomes imperative. The solution is to design a system that is small, accurate, and economical. Using Tiny Machine Learning and SER is the best solution since it can be done on a small-scale and relatively high emotion recognition rate. This paper presents past work, the hardware, software, and the SER prototype’s field design, focusing on detecting the variations of the Anger emotion. A simple and optimum CNN architecture was developed for Arduino Nano 33 BLE Sense implementation. Prototype validation showed that our system could detect not angry, about to be angry, and angry emotions.