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Identification of Moving Vehicle Trajectory Using Manifold Learning

机译:利用流形学习识别运动车辆的轨迹

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We present a method to identify the trajectories of moving vehicles from various viewpoints using manifold learning to be implemented on an embedded platform for traffic surveillance. We use a robust kernel Isomap to estimate the intrinsic low-dimensional manifold of input space. During training, the extracted features of the training data are projected on to a 2D manifold and features corresponding to each trajectory are clustered in to k clusters, each represented as a Gaussian model. During identification, features of test data are projected on to the 2D manifold constructed during training and the Mahalano-bis distance between test data and Gaussian models of each trajectory is evaluated to identify the trajectory. Experimental results demonstrate the effectiveness of the proposed method in estimating the trajectories of the moving vehicles, even though shapes and sizes of vehicles change rapidly.
机译:我们提出了一种方法,该方法使用集成学习在交通监控的嵌入式平台上实现,从而从各种观点识别移动车辆的轨迹。我们使用鲁棒的内核Isomap来估计输入空间的固有低维流形。在训练期间,将训练数据的提取特征投影到2D流形上,并将与每个轨迹相对应的特征聚集成k个聚类,每个聚类表示为高斯模型。在识别期间,将测试数据的特征投影到训练过程中构造的2D歧管上,并评估测试数据与每个轨迹的高斯模型之间的Mahalano-bis距离,以识别该轨迹。实验结果表明,即使车辆的形状和尺寸发生了快速变化,该方法仍可有效地估计行驶中的车辆的轨迹。

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