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首页> 外文期刊>Journal of Applied Meteorology and Climatology >An Adaptive Tracking Algorithm for Convection in Simulated and Remote Sensing Data
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An Adaptive Tracking Algorithm for Convection in Simulated and Remote Sensing Data

机译:模拟和遥感数据中对流的自适应跟踪算法

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A robust and computationally efficient object tracking algorithm is developed by incorporating various tracking techniques. Physical properties of the objects, such as brightness temperature or reflectivity, are not considered. Therefore, the algorithm is adaptable for tracking convection-like features in simulated data and remotely sensed two-dimensional images. In this algorithm, a first guess of the motion, estimated using the Fourier phase shift, is used to predict the candidates for matching. A disparity score is computed for each target-candidate pair. The disparity also incorporates overlapping criteria in the case of large objects. Then the Hungarian method is applied to identify the best pairs by minimizing the global disparity. The high-disparity pairs are unmatched, and their target and candidate are declared expired and newly initiated objects, respectively. They are tested for merger and split on the basis of their size and overlap with the other objects. The sensitivity of track duration is shown for different disparity and size thresholds. The paper highlights the algorithm's ability to study convective life cycles using radar and simulated data over Darwin, Australia. The algorithm skillfully tracks individual convective cells (a few pixels in size) and large convective systems. The duration of tracks and cell size are found to be lognormally distributed over Darwin. The evolution of size and precipitation types of isolated convective cells is presented in the Lagrangian perspective. This algorithm is part of a vision for a modular platform [viz., TINT is not TITAN (TINT) and Tracking and Object-Based Analysis of Clouds (tobac)] that will evolve into a sustainable choice to analyze atmospheric features.
机译:结合各种跟踪技术,提出了一种鲁棒性强、计算效率高的目标跟踪算法。不考虑物体的物理特性,如亮度、温度或反射率。因此,该算法适用于跟踪模拟数据和遥感二维图像中类似对流的特征。在该算法中,使用傅里叶相移估计的运动的第一个猜测来预测匹配的候选对象。计算每个目标候选对的差异分数。对于大型对象,视差还包含重叠标准。然后应用匈牙利方法,通过最小化全局差异来识别最佳对。高视差对是不匹配的,它们的目标和候选对象分别被宣布为过期对象和新启动的对象。根据它们的大小和与其他物体的重叠程度,对它们进行合并和拆分测试。对于不同的视差和大小阈值,显示了跟踪持续时间的敏感性。本文强调了该算法利用雷达和澳大利亚达尔文上空的模拟数据研究对流生命周期的能力。该算法巧妙地跟踪单个对流单元(大小只有几个像素)和大型对流系统。在达尔文,追踪的持续时间和细胞大小呈对数正态分布。从拉格朗日的角度介绍了孤立对流单体的大小和降水类型的演变。该算法是模块化平台愿景的一部分【即,TINT不是TITAN(TINT)和云的跟踪和基于对象的分析(tobac)】,该平台将演变为分析大气特征的可持续选择。

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