In many urban areas, traffic load and noise pollution are constantly increasing. Automated systems for traffic monitoring are promising countermeasures, which allow to systematically quantify and predict local traffic flow in order to to support municipal traffic planning decisions. In this paper, we present a novel open benchmark dataset, containing 2.5 hours of stereo audio recordings of 4718 vehicle passing events captured with both high-quality sE8 and medium-quality MEMS microphones. This dataset is well suited to evaluate the use-case of deploying audio classification algorithms to embedded sensor devices with restricted microphone quality and hardware processing power. In addition, this paper provides a detailed review of recent acoustic traffic monitoring (ATM) algorithms as well as the results of two benchmark experiments on vehicle type classification and direction of movement estimation using four state-of-the-art convolutional neural network architectures.
翻译:在许多城市地区,交通负荷和噪音污染不断增多,交通监测自动化系统是很有希望的对策,能够系统地量化和预测当地交通流量,以支持市政交通规划决定,我们在本文件中提供了一个新的开放基准数据集,其中载有以高质量的SE8和中质量MEMS麦克风拍摄的4718次车辆通过事件的2.5小时立体录音录音,该数据集非常适合评价将音频分类算法用于麦克风质量和硬件处理能力有限的嵌入式传感器装置的情况,此外,本文件还详细审查了最近的声频交通监测算法,以及利用四个最先进的神经网络结构对车辆类型分类和移动估计方向进行的两项基准试验的结果。