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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >An application of embedology to spatio-temporal pattern recognition
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An application of embedology to spatio-temporal pattern recognition

机译:胚胎学在时空模式识别中的应用

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The theory of embedded time series is shown applicable for determining a reasonable lower bound on the length of test sequence required for accurate classification of moving objects. Sequentially recorded feature vectors of a moving object form a training trajectory in feature space. Each of the sequences of feature vector components is a time series, and under certain conditions, each of these time series has approximately the same fractal dimension. The embedding theorem may be applied to this fractal dimension to establish a sufficient number of observations to determine the feature space trajectory of the object. It is argued that this number is a reasonable lower bound on test sequence length for use in object classification. Experiments with data corresponding to five military vehicles (observed following a projected Lorenz trajectory on a viewing sphere) show that this bound is indeed adequate
机译:显示了嵌入式时间序列的理论,适用于确定对运动对象进行精确分类所需的测试序列长度的合理下限。依次记录运动对象的特征向量在特征空间中形成训练轨迹。特征向量分量的每个序列都是一个时间序列,并且在某些条件下,这些时间序列中的每个具有近似相同的分形维数。可以将嵌入定理应用于此分形维,以建立足够数量的观察值,以确定对象的特征空间轨迹。有人认为该数字是用于对象分类的测试序列长度的合理下限。对对应于五种军用车辆的数据进行的实验(按照观察球体上的Lorenz投影轨迹观察)表明,这个界限确实足够

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