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A Framework for Inter-camera Association of Multi-target Trajectories by Invariant Target Models

机译:不变目标模型的相互作用的多目标轨迹协会的框架

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We propose a novel framework for associating multi-target trajectories across multiple non-overlapping views (cameras) by constructing an invariant model per each observed target. Ideally, these models represent the targets in a unique manner. The models are constructed by generating synthetic images that simulate how targets would be seen from different viewpoints. Our framework does not require any training or other supervised phases. Also, we do not make use of spatiotempo-ral coordinates of trajectories, i.e., our framework seamlessly works with both overlapping and non-overlapping field-of-views (FOVs) as well as widely separated ones. Also, contrary to many other related works, we do not try to estimate the relationship between cameras that tends to be error prone in environments like airports or supermarkets where targets wander about different areas, stop at times, or turn back to their starting location. We show the results obtained by our framework on a rather challenging dataset. Also, we propose a black-box approach based on Support Vector Machine (SVM) for fusing multiple pertinent algorithms and demonstrate the added value of our framework with respect to some basic techniques.
机译:我们提出了一种用于通过构建每个观察到的目标的不变模型来关联多目标轨迹跨多个非重叠视图(摄像机)的新颖框架。理想情况下,这些模型以独特的方式代表目标。通过生成综合图像来构造模型,该图像模拟从不同的视点看到目标的方式。我们的框架不需要任何培训或其他监督阶段。此外,我们没有利用轨迹的斯卡蒂奥氏坐标坐标,即,我们的框架无缝地与重叠和非重叠的视野(FOV)以及广泛分开的框架。另外,与许多其他相关的作品相反,我们不尝试估计相机之间的关系,在机场或超市等环境中倾向于出错,其中目标徘徊在不同的区域,停止时,或转回他们的起始位置。我们展示了我们在相当具有挑战性的数据集中获得的结果。此外,我们提出了一种基于支持向量机(SVM)的黑盒方法,用于融合多个相关算法,并展示了我们关于一些基本技术的框架的附加值。

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