High-resolution imaging using virtual sensors from 2-D autoregressive vector extrapolation

C. S. Marino, P. Chau
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引用次数: 4

Abstract

Virtual sensors are used to attain a robust high-resolution imaging capability that detects weak signals in the presence of strong signals, when the sensors are limited in number due to space, weight, power, and cost constraints. Such conditions are becoming commonplace with the influx of smart systems, wireless networks, remote sensing, and autonomous vehicles/systems. The virtual sensor data is created autonomously in real time from the original data using a novel two-dimensional (2-D) Autoregressive Vector Prediction algorithm. A 2-D transform is then applied to the new virtual data set, which includes the original data, to give a robust high resolution imaging capability. Simulations are used to compare this super-resolution capability with a high-resolution technique and the truth, to resolve previously obscured low-level signals in the presence of a dominant source. The virtual sensor data is also compared to the truth data. We also summarize the computational cost and extrapolation stability to achieve this high-resolution capability.
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高分辨率成像利用虚拟传感器从二维自回归向量外推
由于空间、重量、功率和成本的限制,当传感器数量有限时,虚拟传感器用于获得强大的高分辨率成像能力,在强信号存在的情况下检测弱信号。随着智能系统、无线网络、遥感和自动驾驶汽车/系统的涌入,这种情况变得越来越普遍。虚拟传感器数据是使用一种新颖的二维自回归向量预测算法从原始数据实时自动生成的。然后对包含原始数据的新虚拟数据集进行二维变换,以获得强大的高分辨率成像能力。模拟用于比较这种超分辨率能力与高分辨率技术和真相,以解决先前在主导源存在时模糊的低水平信号。并将虚拟传感器数据与真实数据进行了比较。我们还总结了实现这种高分辨率能力的计算成本和外推稳定性。
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