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Simultaneous Detection and Tracking of Moving-Target Shadows in ViSAR Imagery

机译:同时检测和跟踪Visar Imagery中的移动目标阴影

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Video synthetic-aperture radar (ViSAR) can obtain high-resolution images of a region of interest at a high frame rate. This feature of ViSAR is helpful for real-time detection and tracking of moving targets. Moving-target tracking using ViSAR images is a typical dim-target-tracking problem. In the context of this article, dim targets correspond to the shadows of the moving vehicles cast onto the stationary background scene, which appear at lower gray levels compared with the background clutter. To detect and track multiple slowly maneuvering targets in the ViSAR imagery, we propose a novel algorithm, the expanding and shrinking strategy-based particle filter/dynamic programming-based track-before-detect (ES-TBD) algorithm. To the best of our knowledge, our work represents the first algorithm to deal with the ViSAR-detection and tracking problem using the TBD method. Furthermore, to detect and track a time-varying number of targets, we also propose a novel region-partitioning-based ES-TBD (RP-TBD) algorithm. By exploiting the common information shared between the batches of measurement data and the modeling merit-function-integrated particle filters (PFs), the RP-TBD partitions the observation region into a predicted subregion and an innovative subregion. The RP-TBD algorithm detects newborn targets in the innovative subregion, while maintains tracks of known targets in the predicted subregion. Experimental results using real ViSAR images show that the proposed algorithms outperform the state-of-the-art algorithms on detecting and tracking multiple dim targets in terms of location accuracy and false-alarm suppression.
机译:视频合成孔径雷达(VISAR)可以以高帧速率获得感兴趣区域的高分辨率图像。 Visar的此特征有助于实时检测和跟踪移动目标。使用VISAR图像的移动目标跟踪是典型的DIM目标跟踪问题。在本文的上下文中,暗淡的目标对应于施放到固定背景场景的移动车辆的阴影,与背景杂波相比,在较低的灰度水平上出现。为了检测和跟踪Visar Imagery中的多个缓慢机动目标,我们提出了一种新颖的算法,扩展和基于策略的基于策略的粒子滤波器/动态编程的轨道 - 检测(ES-TBD)算法。据我们所知,我们的工作代表了使用TBD方法处理Visar检测和跟踪问题的第一个算法。此外,为了检测和跟踪时变量的目标,我们还提出了一种新的区域分区的ES-TBD(RP-TBD)算法。通过利用在测量数据批量和建模优势函数集成粒子滤波器(PFS)之间共享的公共信息,RP-TBD将观察区域分区为预测的子区域和创新的子区域。 RP-TBD算法检测创新次区域中的新生目标,同时在预测的子区域中保持已知目标的曲目。使用真实遮阳膜图像的实验结果表明,在位置精度和假警报抑制方面,所提出的算法越优于检测和跟踪多个暗淡目标的最先进的算法。

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