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Probabilistic three-dimensional object tracking based on adaptive depth segmentation.

机译:基于自适应深度分割的概率三维目标跟踪。

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摘要

Object tracking is one of the fundamental topics of computer vision with diverse applications. The arising challenges in tracking, i.e., cluttered scenes, occlusion, complex motion, and illumination variations have motivated utilization of depth information from 3D sensors. However, current 3D trackers are not applicable to unconstrained environments without a priori knowledge. As an important object detection module in tracking, segmentation subdivides an image into its constituent regions. Nevertheless, the existing range segmentation methods in literature are difficult to implement in real-time due to their slow performance. In this thesis, a 3D object tracking method based on adaptive depth segmentation and particle filtering is presented. In this approach, the segmentation method as the bottom-up process is combined with the particle filter as the top-down process to achieve efficient tracking results under challenging circumstances. The experimental results demonstrate the efficiency, as well as robustness of the tracking algorithm utilizing real-world range information.
机译:对象跟踪是具有各种应用程序的计算机视觉的基本主题之一。跟踪中出现的挑战,即场景混乱,遮挡,复杂的运动和照明变化,已经激发了利用3D传感器的深度信息的积极性。但是,当前的3D跟踪器在没有先验知识的情况下不适用于不受约束的环境。作为跟踪中重要的对象检测模块,分割将图像细分为其组成区域。然而,现有文献中的范围分割方法由于其性能较慢而难以实时实现。本文提出了一种基于自适应深度分割和粒子滤波的3D目标跟踪方法。在这种方法中,将分割方法作为自下而上的过程与粒子过滤器作为自上而下的过程相结合,以在困难的情况下实现有效的跟踪结果。实验结果证明了利用真实距离信息的跟踪算法的效率和鲁棒性。

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