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Animal intrusion detection based on convolutional neural network

机译:基于卷积神经网络的动物入侵检测

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The conflict between humans and animals is seen across the country in a variety of forms, including monkey menace in the urban areas, crop raiding by wild pigs and so on. Providing effective solutions for human-animals conflict is now one of the most significant challenges all over the world. In this paper, a wireless sensor network based on UWB technology is used to deploy intrusion detection. By analyzing the characteristics of Ultra wide band (UWB) signals, convolutional neural network is used to learn the characteristics of UWB signals automatically. And finally the SVM or Softmax classifier is used to classify human beings from animals. Several experiments are tested in corn field and the experimental results show that the method proposed in this paper can detect human and animal intrusion very effectively and improve the accuracy of detection by nearly 16% compared to the traditional manual extraction.
机译:全国各地都以各种各样的形式看到人与动物之间的冲突,包括城市地区的猴子威胁,野猪袭击作物等。为人类与动物之间的冲突提供有效的解决方案现在是全世界最重大的挑战之一。本文使用基于UWB技术的无线传感器网络来部署入侵检测。通过分析超宽带(UWB)信号的特征,使用卷积神经网络自动学习UWB信号的特征。最后,将SVM或Softmax分类器用于对动物中的人进行分类。在玉米田进行了几次实验,实验结果表明,与传统的人工提取方法相比,本文提出的方法可以非常有效地检测人畜入侵,并将检测准确率提高了近16%。

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