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A joint manifold leaning-based framework for heterogeneous upstream data fusion

机译:基于联合流形学习的异构上游数据融合框架

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A joint manifold learning fusion (JMLF) approach is proposed for nonlinear or mixed sensor modalities with large streams of data. The multimodal sensor data are stacked to form joint manifolds, from which the embedded low intrinsic dimensionalities are discovered for moving targets. The intrinsic low dimensionalities are mapped to resolve the target locations. The JMLF framework is tested on digital imaging and remote sensing image generation scenes with mid-wave infrared (WMIR) data augmented with distributed radio-frequency (RF) Doppler data. Eight manifold learning methods are explored to train the system with the neighborhood preserving embedding showing promise for robust target tracking using video-radio-frequency fusion. The JMLF method shows a 93% improved accuracy as compared to a standard target tracking (e.g., Kalman-filter based) approach.
机译:针对具有大数据流的非线性或混合传感器形式,提出了一种联合流形学习融合(JMLF)方法。堆叠多峰传感器数据以形成关节流形,从中发现嵌入的低固有维数用于移动目标。固有的低维被映射为解析目标位置。 JMLF框架已在数字成像和遥感影像生成场景上进行了测试,其中使用了中波红外(WMIR)数据并添加了分布式射频(RF)多普勒数据。探索了八种多样的学习方法来训练具有邻域保留嵌入的系统,这显示了使用视频-射频融合进行稳健目标跟踪的希望。与标准目标跟踪(例如,基于卡尔曼滤波器的方法)相比,JMLF方法的准确性提高了93%。

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