Identify sound in raucous acoustic environment

Borui Zhuang, Yuchen Zhang, Zhongyu Wang, Zixuan Liu
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Abstract

Due to 2023, over 200 million people worldwide are visually impaired. The needs of people with visual impairments receive scant attention in todays world. Most of them cannot walk independently on Crowded thoroughfares. There are still some challenges in developing assistive devices for the visually impaired. This paper focuses on a classification system within the earphone worn on the ear that can distinguish between different sounds and can be located by the Sharpless of the sound waves. The proposed method comprises two main modules: the first is to transfer the audio signals to Spectrograms, which is done in Python, and then a trained Convolutional Neural Network (CNN) is used in Matlab to identify different types of sounds. When tested in a real-life environment, this system proved useful and accurate in identifying dangerous signals. This innovation is intended to provide them with the optimal time to evacuate dangerous areas, ensuring their safety.
在嘈杂的声学环境中识别声音
到 2023 年,全球将有超过 2 亿人视力受损。在当今世界,视障人士的需求很少受到关注。他们中的大多数人无法在拥挤的大街上独立行走。为视障人士开发辅助设备仍面临一些挑战。本文的重点是在佩戴在耳朵上的耳机内建立一个分类系统,该系统可以区分不同的声音,并可以通过声波的夏普定位。所提议的方法包括两个主要模块:首先是将音频信号转换为频谱图,这是在 Python 中完成的,然后在 Matlab 中使用训练有素的卷积神经网络(CNN)来识别不同类型的声音。在实际环境中进行测试时,该系统被证明在识别危险信号方面非常有用和准确。这项创新旨在为他们提供撤离危险区域的最佳时机,确保他们的安全。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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