Proposed CNN Model for Audio Recognition on Embedded Device

Minh Pham Ngoc, Tan Ngo Duy, Hoan Huynh Duc, Kiet Tran Anh
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Abstract

The audio detection system enables autonomous cars to recognize their surroundings based on the noise produced by moving vehicles. This paper proposes the utilization of a machine learning model based on convolutional neural networks (CNN) integrated into an embedded system supported by a microphone. The system includes a specialized microphone and a main processor. The microphone enables the transmission of an accurate analog signal to the main processor, which then analyzes the recorded signal and provides a prediction in return. While designing an adequate hardware system is a crucial task that directly impacts the predictive capability of the system, it is equally imperative to train a CNN model with high accuracy. To achieve this goal, a dataset containing over 3000 up-to-5-second WAV files for four classes was obtained from open-source research. The dataset is then divided into training, validation, and testing sets. The training data is converted into images using the spectrogram technique before training the CNN. Finally, the generated model is tested on the testing segment, resulting in a model accuracy of 77.54%.
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用于嵌入式设备音频识别的拟议 CNN 模型
音频检测系统使自动驾驶汽车能够根据行驶车辆产生的噪声识别周围环境。本文提出利用基于卷积神经网络(CNN)的机器学习模型,将其集成到由麦克风支持的嵌入式系统中。该系统包括一个专用麦克风和一个主处理器。麦克风可将精确的模拟信号传输到主处理器,然后主处理器对记录的信号进行分析并提供预测结果。设计一个适当的硬件系统是一项直接影响系统预测能力的关键任务,而训练一个高精度的 CNN 模型也同样重要。为了实现这一目标,我们从开源研究中获得了一个数据集,其中包含 3000 多个长达 5 秒的 WAV 文件,涉及四个类别。然后,数据集被分为训练集、验证集和测试集。在训练 CNN 之前,使用频谱图技术将训练数据转换为图像。最后,在测试片段上测试生成的模型,结果模型准确率为 77.54%。
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