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Algorithms for distributed feature extraction in multi-camera visual sensor networks

机译:多摄像机视觉传感器网络中分布式特征提取的算法

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Real-time visual analysis tasks, like tracking and recognition, require swift execution of computationally intensive algorithms. Enabling visual sensor networks to perform such tasks can be achieved by augmenting the sensor network with processing nodes and distributing the computational burden among several nodes, in a way that the cameras contend for the processing nodes while trying to minimize their completion times. In this paper, we formulate the problem of minimizing the completion time of all camera sensors as an optimization problem. We propose algorithms for fully distributed optimization, analyze the existence of equilibrium allocations, and evaluate their performance. Simulation results show that distributed optimization can provide good performance despite limited information availability at low computational complexity, but the predictable and stable performance is often not provided by the algorithm that provides lowest average completion time.
机译:实时视觉分析任务,如跟踪和识别,需要SWIFT执行计算密集型算法。通过使用处理节点增强传感器网络并在几个节点之间分发计算负担,可以实现可视传感器网络以执行这些任务,以便在尝试最小化其完成时间的同时争取处理节点的方式争取处理节点。在本文中,我们制定了最小化所有相机传感器的完成时间作为优化问题的问题。我们提出了用于完全分布式优化的算法,分析均衡分配的存在,并评估其性能。仿真结果表明,尽管在低计算复杂度下有限信息可用性有限,但算法通常不提供可预测和稳定的性能,但算法可以提供良好的性能。

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