Joint audio-video object localization using a recursive multi-state multi-sensor estimator

Norbert Strobel, S. Spors, R. Rabenstein
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引用次数: 9

Abstract

Object localization based on audio and video information is important for the analysis of dynamic scenes, such as video conferences or traffic situations. In this paper, we view the the dynamic audio-video object localization problem as a joint recursive estimation problem. It is solved using a decentralized Kalman filter fusing both audio and video position estimates. To better take into account different object maneuvers, multiple state-space equations are also incorporated. The result is a recursive multi-state multi-sensor estimator. Experiments show that it yields significantly improved joint position estimates compared to results achieved by using either an audio or a video system only.
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使用递归多状态多传感器估计器的联合音视频目标定位
基于音频和视频信息的目标定位对于动态场景(如视频会议或交通状况)的分析非常重要。本文将动态音视频目标定位问题看作是一个联合递归估计问题。采用分散卡尔曼滤波器融合音频和视频的位置估计。为了更好地考虑不同的目标机动,还引入了多个状态空间方程。结果得到一个递归的多状态多传感器估计器。实验表明,与仅使用音频或视频系统的结果相比,它产生了显着改善的关节位置估计。
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