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Distributed particle filter tracking with online multiple instance learning in a camera sensor network

机译:相机传感器网络中在线多实例学习的分布式粒子过滤器跟踪

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This paper proposes a distributed algorithm for object tracking in a camera sensor network. At each camera node, an efficient online multiple instance learning algorithm is used to model object's appearance. This is integrated with particle filter for camera's image plane tracking. To improve the tracking accuracy, each camera node shares its particle states with others and fuses multi-camera information locally. In particular, particle weights are updated according to the fused information. Then, appearance model is updated with the re-weighted particles. The effectiveness of the proposed algorithm is demonstrated on human tracking in challenging environments.
机译:本文提出了一种用于相机传感器网络中目标跟踪的分布式算法。在每个摄像头节点处,使用有效的在线多实例学习算法对对象的外观进行建模。它与用于相机图像平面跟踪的粒子过滤器集成在一起。为了提高跟踪精度,每个摄像机节点都与其他节点共享其粒子状态,并在本地融合多摄像机信息。特别地,根据融合的信息来更新粒径。然后,使用重新加权的粒子更新外观模型。该算法的有效性在具有挑战性的环境中的人体跟踪中得到了证明。

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