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People Localization in a Camera Network Combining Background Subtraction and Scene-Aware Human Detection

机译:结合背景减法和场景感知人体检测的摄像机网络中的人员定位

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In a network of cameras, people localization is an important issue. Traditional methods utilize camera calibration and combine results of background subtraction in different views to locate people in the three dimensional space. Previous methods usually solve the localization problem iteratively based on background subtraction results, and high-level image information is neglected. In order to fully exploit the image information, we suggest incorporating human detection into multi-camera video surveillance. We develop a novel method combining human detection and background subtraction for multi-camera human localization by using convex optimization. This convex optimization problem is independent of the image size. In fact, the problem size only depends on the number of interested locations in ground plane. Experimental results show this combination performs better than background subtraction-based methods and demonstrate the advantage of combining these two types of complementary information.
机译:在摄像机网络中,人员本地化是一个重要的问题。传统方法利用相机校准,并结合不同视图中的背景减法结果来在三维空间中定位人。先前的方法通常基于背景扣除结果来迭代地解决定位问题,并且忽略了高级图像信息。为了充分利用图像信息,我们建议将人的检测纳入多摄像机视频监控中。我们开发了一种新的方法,结合人的检测和背景扣除,通过使用凸优化来实现多摄像机人的定位。这个凸优化问题与图像大小无关。实际上,问题的大小仅取决于接地平面中感兴趣的位置的数量。实验结果表明,这种组合比基于背景减法的方法性能更好,并且证明了将这两种类型的互补信息组合在一起的优势。

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