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基于卷積神經網絡的反無人機系統聲音識別方法

Sound recognition method of an anti-UAV system based on a convolutional neural network

  • 摘要: 針對如何識別無人機的問題,提出了一種基于卷積神經網絡的聲音識別無人機的方法。首先,對100 m范圍內的無人機、鳥和人的聲音進行采集、預處理和提取MFCC+GFCC特征值,將其特征參數作為卷積神經網絡學習和識別的數據集;然后分別設計了支持向量機和卷積神經網絡兩種模型對無人機等聲音進行識別實驗。實驗結果表明,運用支持向量機識別無人機的準確率為91.9%,卷積神經網絡識別無人機的準確率為96.5%。為了進一步驗證設計的卷積神經網絡的識別能力,在部分UrbanSound8K數據集上進行測試,準確率達到90%。實驗結果表明運用卷積神經網絡識別無人機具有可行性,且識別性能優于支持向量機。

     

    Abstract: With the rapid growth of the UAV market, UAVs have been widely used in aerial photography, agricultural plant protection, power inspection, forest fire prevention, high-altitude fire fighting, emergency communication, and UAV logistics. However, “black flight” incidents of unlicensed flights and random flights frequently occur, which results in severe security risks to civil aviation airports, sensitive targets, and major activities. Moreover, owing to their characteristics of maneuverability, intelligent control, and low cost, UAVs can be easily used for criminal activities, which threatens public and national security. How to effectively detect UAVs and implement effective measures for UAVs, especially “black-flying” UAVs, is an active and difficult problem that needs to be urgently solved, and it is also an important research area in the field of anti-UAV systems. The research and development of anti-UAV systems is an important focus in national public security, and UAV identification is one of the key technologies in anti-UAV systems. Aiming at the problem of how to recognize UAVs, a sound-recognition method based on a convolutional neural network (CNN) was proposed. The UAV anti-jamming technology based on acoustic signals is not easily affected by an UAV size, shelter, ambient light, and ground clutter, and sound is an inherent attribute of UAVs, which is also applicable to UAVs in a radio-silence state. In this study, UAV sounds, bird sounds, and human voice within 100 m were collected and preprocessed; then the mel frequency cepstral coefficient and gammatone frequency cepstral coefficient eigenvalues were extracted. Support vector machine (SVM) and CNN models were designed to recognize UAV sounds and other sounds. The experimental results show that the SVM and CNN accuracies are 93.3% and 96.7%, respectively. To further verify the recognition ability of the designed CNN, it was tested on some Urbansound8K datasets, and its accuracy reached 90%. The experimental results show that a CNN is feasible for UAV recognition, and it has a better recognition performance than a SVM.

     

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