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Recognizing human-vehicle interactions from aerial video without training

机译:无需培训即可从航拍视频中识别人车交互

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We propose a novel framework to recognize human-vehicle interactions from aerial video. In this scenario, the object resolution is low, the visual cues are vague, and the detection and tracking of objects are less reliable as a consequence. Any methods that require the accurate tracking of objects or the exact matching of event definition are better avoided. To address these issues, we present a temporal logic based approach which does not require training from event examples. At the low-level, we employ dynamic programming to perform fast model fitting between the tracked vehicle and the rendered 3-D vehicle models. At the semantic-level, given the localized event region of interest (ROI), we verify the time series of human-vehicle relationships with the pre-specified event definitions in a piecewise fashion. With special interest in recognizing a person getting into and out of a vehicle, we have tested our method on a subset of the VIRAT Aerial Video dataset [11] and achieved superior results. Our framework can be easily extended to recognize other types of human-vehicle interactions.
机译:我们提出了一种新颖的框架来识别航空视频中的人车交互。在这种情况下,对象分辨率低,视觉提示模糊,因此对象的检测和跟踪可靠性较差。最好避免使用任何需要对对象进行精确跟踪或对事件定义进行精确匹配的方法。为了解决这些问题,我们提出了一种基于时间逻辑的方法,该方法不需要事件示例中的训练。在低层,我们使用动态编程在跟踪的车辆和渲染的3D车辆模型之间执行快速模型拟合。在语义级别上,考虑到感兴趣的局部事件区域(ROI),我们以分段方式验证了具有预先指定的事件定义的人车关系的时间序列。对于识别人进出车辆的特殊兴趣,我们在VIRAT航拍视频数据集的一部分上测试了我们的方法[11],并获得了出色的结果。我们的框架可以轻松扩展以识别其他类型的人车交互。

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