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SPACE OBJECT IDENTIFICATION Using Spatio-Temporal Pattern Recognition

机译:使用时空模式识别的空间对象识别

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This paper demonstrates the application of new pattern recognition techniques that can be used to characterize space objects, The feature space trajectory neural network (FST NN) was first presented by Leonard Neiberg and David P. Casasent in 1994 as a target identification tool. Kenneth H. Fielding and Dennis W. Ruck recently applied the hidden Markov model (HMM) classifier to a 3D moving light display identification problem and a target recognition problem, using time history information to improve classification results. This paper shows how the FST NN and HMM can be used to automate optical detection of space object anomalies. Time sequenced images produced by a simulation program are used for testing these anomaly detection algorithms. Two data sets are tested. The second data set is tested with various levels of shot noise. The first data set is more difficult to classify, with the best FST NN test achieving a 100% anomaly detection rate with 5% false alarm rate. FST NN and HMM tests on the second data set achieved 100% anomaly detection with no false alarms. With various levels of shot noise added, the FST NN achieves a 100% anomaly detection rate with 4% false alarm rate. A variety of Fourier features are tested with energy normalized low frequency coefficients producing the best consistent results across data sets and noise levels. A new FST NN test is presented that measures how well the order of a test sequence matches other sequences in the database. The original FST NN is based strictly on feature space distance, but when the order of the sequence is important, the new test is useful.
机译:本文展示了可用于表征空间对象的新模式识别技术的应用,特征空间轨迹神经网络(FST NN)首先由Leonard Neiberg和David P. Casentent在1994年作为目标识别工具。 Kenneth H. Fielding和Dennis W. Ruck最近将隐藏的Markov模型(HMM)分类器应用于3D移动光显示识别问题和目标识别问题,使用时间历史信息来改善分类结果。本文显示了FST NN和HMM如何用于自动化空间对象异常的光学检测。模拟程序产生的时间测序图像用于测试这些异常检测算法。测试了两个数据集。使用各种镜头噪声测试第二个数据集。第一个数据集更难以进行分类,具有最佳的FST NN测试,实现100%异常检测率,具有5%的误报率。第二数据集上的FST NN和HMM测试实现了100%异常检测,没有误报。添加了各种镜头噪声,FST NN达到100%异常检测率,具有4%的误报率。使用能量标准化的低频系数测试各种傅里叶功能,产生数据集和噪声水平的最佳一致性结果。提出了一种新的FST NN测试,以衡量测试序列的顺序与数据库中的其他序列匹配的程度。最初的FST NN是严格的特征空间距离,但是当序列的顺序很重要时,新测试很有用。

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