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Simultaneously exploiting spectral similarity and spatial distribution for patterned minefield detection

机译:同时利用图案雷区检测的光谱相似性和空间分布

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In this paper we investigate how shape/spectral similarity of the mine signature and the minefield like spatial distribution can be exploited simultaneously to improve the performance for patterned minefield detection. The minefield decision is based on the detected targets obtained by an anomaly detector, such as the RX algorithm in the image of a given field segment. Spectral, shape or texture features at the target locations are used to model the likelihood of the targets to be potential mines. The spatial characteristic of the patterned minefield is captured by the expected distribution of nearest neighbor distances of the detected mine locations. The false alarms in the minefield are assumed to constitute a Poisson point process. The overall minefield detection problem for a given segment is formulated as a Markov marked point process (MMPP). Minefield decision is formulated under binary hypothesis testing using maximum log-likelihood ratio. A quadratic complexity algorithm is developed and used to maximize the log-likelihood ratio. A procedure based on expectation maximization is evaluated for estimating unknown parameters like mine-level probability of detection and mine-to-mine separation. The patterned minefield detection performance under this MMPP formulation is compared to baseline algorithms using simulated data.
机译:在本文中,我们研究了矿井签名的形状/光谱相似性和雷米场可以同时利用空间分布,以提高图案雷区检测的性能。雷米域决策基于由异常检测器获得的检测到的目标,例如给定场段的图像中的RX算法。目标位置处的光谱,形状或纹理特征用于模拟目标是潜在地雷的可能性。通过检测到的矿井位置的最近邻距离的预期分布捕获图案化雷场的空间特性。假设雷区中的误报是构成泊松点过程。给定段的整体雷区检测问题被制定为马尔可夫标记点过程(MMPP)。 Minefield决定在使用最大对数似然比下的二元假设测试下配制。开发了一种二次复杂性算法,用于最大化日志似然比。评估基于期望最大化的过程,用于估计检测和矿井到矿井分离的矿井级概率等未知参数。将该MMPP制剂的图案化的雷区检测性能与使用模拟数据的基线算法进行比较。

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