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Vector neural network for low signal-to-noise ratio detection of a target

机译:向量神经网络,用于目标的低信噪比检测

摘要

A vector neural network (VNN) of interconnected neurons is provided in transition mappings of potential targets wherein the threshold (energy) of a single frame does not provide adequate information (energy) to declare a target position. The VNN enhances the signal-to-noise ratio (SNR) by integrating target energy over multiple frames including the steps of postulating massive numbers of target tracks (the hypotheses), propagating these target tracks over multiple frames, and accommodating different velocity target by pixel quantization. The VNN then defers thresholding to subsequent target stages when higher SNR's are prevalent so that the loss of target information is minimized, and the VNN can declare both target location and velocity. The VNN can further include target maneuver detection by a process of energy balancing hypotheses.
机译:在潜在目标的过渡映射中提供了相互连接的神经元的矢量神经网络(VNN),其中单个帧的阈值(能量)没有提供足够的信息(能量)来声明目标位置。 VNN通过在多个帧上集成目标能量来增强信噪比(SNR),包括以下步骤:假设大量目标轨道(假设),在多个帧上传播这些目标轨道,并逐像素适应不同的速度目标量化。然后,当较高的SNR盛行时,VNN将阈值延迟到后续目标阶段,以便将目标信息的损失最小化,并且VNN可以声明目标位置和速度。 VNN可以进一步包括通过能量平衡假设的过程进行的目标机动检测。

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