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Single Sensor Acoustic Feature Extraction for Embedded Realtime Vehicle Classification

机译:用于嵌入式实时车辆分类的单传感器声学特征提取

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摘要

Vehicle classification is an important task for various traffic monitoring applications. This paper investigates the capabilities of acoustic feature generation for vehicle classification. Six temporal and spectral features are extracted from the audio recordings. Six different classification algorithms are compared using the extracted features. We focus on a single sensor setting to keep the computational effort low and evaluate its classification accuracy and real-time performance. The experimental evaluation is performed on our embedded platform using recorded data of about 150 vehicles. The results are applied in our ongoing research on fusing video, laser and acoustic data for real-time traffic monitoring.
机译:车辆分类是各种交通监控应用的重要任务。本文研究了用于车辆分类的声学特征生成功能。从录音中提取了六个时间和频谱特征。使用提取的特征比较六种不同的分类算法。我们专注于单个传感器设置,以保持较低的计算量,并评估其分类精度和实时性能。在我们的嵌入式平台上使用大约150辆车辆的记录数据进行了实验评估。这些结果将应用于我们正在进行的有关融合视频,激光和声学数据以进行实时交通监控的研究中。

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