Neural network-based adaptive selection CFAR for radar target detection in various environments

B. Rohman, D. Kurniawan
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引用次数: 4

Abstract

Constant false alarm rate (CFAR), a target detection method commonly used in the radar systems, has an inconsistent performance against various environments. For improving the radar detectability, this paper proposes a novel scheme of radar target detection using neural network-based adaptive selection CFAR. The proposed method employs cell-averaging, ordered-statistic, greatest-of and smallest-of CFAR thresholds as the basis of references. The pattern of those threshold values combined with the cell under test signal value will be identified and classified by the neural network to compute the raw threshold. Then, the final threshold is selected depending on the nearest value between raw and four referenced CFARs. The performance of the proposed method is examined against three possible cases of the radar systems including homogeneous background, multiple targets and clutter boundary. The result of this research shows that the proposed method outperforms the classical CFARs due to the adaptive selection algorithm can select properly among referenced CFARs against the given cases particularly in the homogeneous and multiple target environments.
基于神经网络的自适应选择CFAR在各种环境下的雷达目标检测
恒定虚警率(CFAR)是雷达系统中常用的一种目标检测方法,但在不同环境下存在性能不一致的问题。为了提高雷达的可探测性,提出了一种基于神经网络的自适应选择CFAR的雷达目标探测新方案。该方法采用细胞平均、有序统计、CFAR最大和最小阈值作为参考依据。这些阈值的模式结合被测细胞的信号值,由神经网络进行识别和分类,计算出原始阈值。然后,根据原始cfar和四个引用cfar之间最接近的值选择最终阈值。针对均匀背景、多目标和杂波边界三种可能情况,对该方法进行了性能测试。研究结果表明,该方法的自适应选择算法能够针对给定情况在参考cfar中进行正确的选择,特别是在同构和多目标环境下,优于经典的cfar。
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