This work investigates how to identify the source of impulsive noise events using a pair of wireless noise sensors. One sensor is placed at a known noise source, and another sensor is placed at the noise receiver. Machine learning models receive data from the two sensors and estimate whether a given noise event originates from the known noise source or another source. To avoid privacy issues, the approach uses on-edge preprocessing that converts the sound into privacy compatible spectrograms. The system was evaluated at a shooting range and explosives training facility, using data collected during noise emission testing. The combination of convolutional neural networks with cross-correlation achieved the best results. We created multiple alternative models using different spectrogram representations. The best model detected 70.8\% of the impulsive noise events and correctly predicted 90.3\% of the noise events in the optimal trade-off between recall and precision.
翻译:这项工作研究如何使用一对无线噪声传感器查明脉动噪音事件的来源。一个传感器放在已知的噪音源,另一个传感器放在噪音接收器。机器学习模型从两个传感器接收数据,并估计某一噪音事件是来自已知噪音源还是另一个来源。为了避免隐私问题,在前端处理时使用将声音转换成隐私兼容光谱的尖端处理方法。该系统是在射击场和爆炸物训练设施使用在噪音排放试验期间收集的数据进行评估的。进化神经网络与交叉反应网络相结合,取得了最佳结果。我们利用不同的光谱显示方式创建了多种替代模型。最佳模型检测了脉动噪音事件70.8 ⁇,并正确预测了回溯和精确度最佳交换过程中的噪音事件90.3 ⁇ 。