Outdoor shooting ranges are subject to noise regulations from local and national authorities. Restrictions found in these regulations may include limits on times of activities, the overall number of noise events, as well as limits on number of events depending on the class of noise or activity. A noise monitoring system may be used to track overall sound levels, but rarely provide the ability to detect activity or count the number of events, required to compare directly with such regulations. This work investigates the feasibility and performance of an automatic detection system to count noise events. An empirical evaluation was done by collecting data at a newly constructed shooting range and training facility. The data includes tests of multiple weapon configurations from small firearms to high caliber rifles and explosives, at multiple source positions, and collected on multiple different days. Several alternative machine learning models are tested, using as inputs time-series of standard acoustic indicators such as A-weighted sound levels and 1/3 octave spectrogram, and classifiers such as Logistic Regression and Convolutional Neural Networks. Performance for the various alternatives are reported in terms of the False Positive Rate and False Negative Rate. The detection performance was found to be satisfactory for use in automatic logging of time-periods with training activity.
翻译:这些条例的限制可能包括对活动时间的限制、噪音事件总数,以及根据噪音或活动类别对事件数量的限制; 噪音监测系统可用于跟踪总体声音水平,但很少提供检测活动或计数事件数量的能力,以直接与这些条例进行比较; 这项工作调查自动检测系统的可行性和性能,以计算噪音事件; 通过在新建射击场和培训设施收集数据进行了实证评价; 数据包括在多种来源位置对小型火器到高口径步枪和爆炸物的多种武器配置进行测试,并在多日间收集; 测试几种替代机器学习模型,使用A加权音级和1/3级八分光谱仪等标准声学指标的投入时间序列和分类器,如后勤倒退和进化神经网络; 以假正率和假负值率报告各种替代方法的绩效; 发现检测性业绩令人满意,可以在培训活动中自动记录时间段的使用情况。