从众包视频元数据中进行事件地理定位和跟踪

Amit More, S. Chaudhuri
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引用次数: 4

摘要

我们提出了一种新的事件地理定位技术(即从智能手机设备收集的众包视频的传感器元数据中对地球表面的事件进行二维定位)。借助智能手机设备中可用的传感器,如数字指南针和GPS接收器,我们收集元数据信息,如摄像头观看方向和位置以及视频。然后使用可用的传感器元数据将事件定位作为约束优化问题。我们在收集的实验数据上的结果显示了事件的正确定位,由于视觉数据的性质,这对于传统的基于视觉的方法来说尤其具有挑战性。由于我们的方法中只使用传感器元数据,因此与使用视频信息相比,计算开销要少得多。最后,我们举例说明了通过地理定位分析多源视频数据的好处。
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Event geo-localization and tracking from crowd-sourced video metadata
We propose a novel technique for event geo-localization (i.e. 2-D location of the event on the surface of the earth) from the sensor metadata of crowd-sourced videos collected from smartphone devices. With the help of sensors available in the smartphone devices, such as digital compass and GPS receiver, we collect metadata information such as camera viewing direction and location along with the video. The event localization is then posed as a constrained optimization problem using available sensor metadata. Our results on the collected experimental data shows correct localization of events, which is particularly challenging for classical vision based methods because of the nature of the visual data. Since we only use sensor metadata in our approach, computational overhead is much less compared to what would be if video information is used. At the end, we illustrate the benefits of our work in analyzing the video data from multiple sources through geo-localization.
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