The JTC technology deals with the problem of target tracking and target classification simultaneously within a unified framework.The fundamental idea of the JTC technology is that by taking advantage of the mutual exc...The JTC technology deals with the problem of target tracking and target classification simultaneously within a unified framework.The fundamental idea of the JTC technology is that by taking advantage of the mutual exchange of useful information between the tracker and classifier,significant improvements in performance of both target tracking and target classification can be expected.The principle of JTC technology is introduced.The existing JTC technologies are broadly categorized into two classes,i.e.,point-target-motion-model-based JTC and rigid-target-motion-based JTC,which are then compared in detail.The advance of the JTC technology is surveyed with comments on some related literatures.Finally,some opening topics of the JTC technology are discussed.展开更多
猪的声音能够反映生猪的应激状态以及健康状况,同时声音信号也是最容易通过非接触方式采集到的生物特征之一。深层神经网络在图像分类研究中显示了巨大优势。谱图作为一种可视化声音时频特征显示方式,结合深层神经网络分类模型,可以提...猪的声音能够反映生猪的应激状态以及健康状况,同时声音信号也是最容易通过非接触方式采集到的生物特征之一。深层神经网络在图像分类研究中显示了巨大优势。谱图作为一种可视化声音时频特征显示方式,结合深层神经网络分类模型,可以提高声音信号分类的精度。现场采集不同状态的猪只声音,研究适用于深层神经网络结构的最优谱图生成方法,构建了猪只声音谱图的数据集,利用Mobile Net V2网络对3种状态猪只声音进行分类识别。通过分析对比不同谱图参数以及网络宽度因子和分辨率因子,得出适用于猪只声音分类的最优模型。识别精度方面,通过与支持向量机,随机森林,梯度提升决策树、极端随机树4种模型进行对比,验证了算法的有效性,异常声音分类识别精度达到97.3%。该研究表明,猪只的异常发声与其异常行为相关,因此,对猪只的声音进行识别有助于对其进行行为监测,对建设现代化猪场具有重要意思。展开更多
文摘The JTC technology deals with the problem of target tracking and target classification simultaneously within a unified framework.The fundamental idea of the JTC technology is that by taking advantage of the mutual exchange of useful information between the tracker and classifier,significant improvements in performance of both target tracking and target classification can be expected.The principle of JTC technology is introduced.The existing JTC technologies are broadly categorized into two classes,i.e.,point-target-motion-model-based JTC and rigid-target-motion-based JTC,which are then compared in detail.The advance of the JTC technology is surveyed with comments on some related literatures.Finally,some opening topics of the JTC technology are discussed.
文摘猪的声音能够反映生猪的应激状态以及健康状况,同时声音信号也是最容易通过非接触方式采集到的生物特征之一。深层神经网络在图像分类研究中显示了巨大优势。谱图作为一种可视化声音时频特征显示方式,结合深层神经网络分类模型,可以提高声音信号分类的精度。现场采集不同状态的猪只声音,研究适用于深层神经网络结构的最优谱图生成方法,构建了猪只声音谱图的数据集,利用Mobile Net V2网络对3种状态猪只声音进行分类识别。通过分析对比不同谱图参数以及网络宽度因子和分辨率因子,得出适用于猪只声音分类的最优模型。识别精度方面,通过与支持向量机,随机森林,梯度提升决策树、极端随机树4种模型进行对比,验证了算法的有效性,异常声音分类识别精度达到97.3%。该研究表明,猪只的异常发声与其异常行为相关,因此,对猪只的声音进行识别有助于对其进行行为监测,对建设现代化猪场具有重要意思。