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A model for predicting noise source-receiver distance based on an object detection function

机译:基于对象检测函数预测噪声源 - 接收器距离的模型

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An accurate aircraft noise prediction model is necessary to predict the damage caused by expanded and new-constructed airport projects. Some widely-used models are constructed based on noise-power-distance (NPD) data appointed for each aircraft model. However, the lack of NPD data for some types of military aircraft makes it challenging to predict noise around airports that serve both civil and military purposes. Since NPD data were obtained based on manual measurement and often spends required much of human labor and dedicated measuring equipment, therefore, it is desirable to have an automatic system for this effort. This study proposes a model that estimates the distance from the recording point to the airplane, or noise source-receiver distance, based on the video that captures the flight movements around the airport and then provides reliable NPD data of a specific aircraft. In this study, the time-series data of the flight movement were separated into sound and image components. Then, the time-series images were analyzed and input to M2det for object detection. Finally, the noise source-receiver distance was estimated based on the length of the airplane in the image identified by the object detection function.
机译:准确的飞机噪声预测模型是预测扩大和新建的机场项目造成的损害所必需的。一些基于对每个飞机模型所指定的噪声功率 - 距离(NPD)数据构建的一些广泛使用的模型。然而,对于某些类型的军用飞机缺乏NPD数据使得它挑战预测机场周围的噪音,即设有民事和军事目的。由于基于手动测量获得了NPD数据,并且通常花费大部分人类劳动力和专用测量设备,因此希望拥有这种努力的自动系统。本研究提出了一种模型,其基于捕获机场周围的飞行运动的视频估计从记录点到飞机的距离或噪声源 - 接收器距离,然后提供特定飞机的可靠NPD数据。在这项研究中,飞行运动的时间序列数据分成声音和图像组件。然后,分析时间序列图像并输入到​​M2DET以进行对象检测。最后,基于由物体检测功能识别的图像中的飞机的长度估计噪声源接收器距离。

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