Cooperation of acoustic and vision data for multitarget tracking

M. Zebina
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引用次数: 3

Abstract

This paper explains the implementation of a real time bi-target tracking using both acoustic and video data. We show how the cooperation of highly heterogeneous sensors may improve the overall efficiency. These data are filtered using Kalman filtering techniques. We send reconfiguration orders to the actuators for an optimal new data sampling. The observed scene raises some classical control problems like the partial observability conditions, the unpredictable behaviors for the different components of the world because of the limited a priori knowledge and the synchronisation of the data.
多目标跟踪中声学和视觉数据的协同
本文介绍了利用声和视频数据实现实时双目标跟踪的方法。我们展示了高度异构传感器的合作如何提高整体效率。这些数据使用卡尔曼滤波技术进行滤波。我们将重新配置命令发送到执行器以获得最佳的新数据采样。观察到的场景提出了一些经典的控制问题,如部分可观察性条件,由于有限的先验知识和数据的同步性,世界的不同组成部分的不可预测行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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