Analysis of commercial drone sounds and its identification

Sinwoo Yoo, H. Oh
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引用次数: 3

Abstract

The usage of quadcopter types of drones is now on mature and a practical stage and many major manufacturers are expanding its applications into various regions with it. Considerable characteristic of this type of flying object as its maneuverability and practicality is now being focused on how we control this among our urban life from the possibility of any offensive usage. Most of them are either small enough to avoid many current airborne detection methods and cheap enough to use them as disposable. In this paper, we tried to analyze the recorded sounds of a subset of commercial quadcopter types of drones and built a trained simple non-linear neural network filter to classify them among the given sound samples. We borrowed Mel-frequency cepstral coefficients as the well-known methodology of sound analysis process but including some of the parameter adjustments for this research, and applied LeNet neural network filter structure for the following classification test. To maintain the information of adjacent samples among the series of wave samples, 2-D spectrogram planning was applied as for the input signal preprocessing. Most of the frequencies from drones were observed as gathered around 3 to 5Khz, up to around 10Khz, and adjusted LeNet architecture could classify over 10 types of drone categories with over 95% of accuracy.
商用无人机声音分析及其识别
四轴飞行器类型的无人机的使用现在处于成熟和实用阶段,许多主要制造商正在将其应用扩展到各个地区。这种类型的飞行器的相当大的特点是它的机动性和实用性,现在我们关注的是如何在我们的城市生活中控制它,使其免受任何攻击性用途的可能性。它们中的大多数要么足够小,可以避开目前的许多空中探测方法,要么足够便宜,可以一次性使用。在本文中,我们试图分析商业四轴飞行器类型无人机的一个子集的录制声音,并建立一个训练简单的非线性神经网络过滤器,以在给定的声音样本中对它们进行分类。我们借鉴了mel频率倒谱系数作为声音分析过程中众所周知的方法,但在本研究中包括一些参数调整,并应用LeNet神经网络滤波结构进行以下分类测试。为了保持波样本序列中相邻样本的信息,输入信号预处理采用二维谱图规划。无人机的大部分频率被观察到聚集在3到5Khz左右,最高可达10Khz左右,调整后的LeNet架构可以分类超过10种无人机类别,准确率超过95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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