Object localization and tracking based on multiple sensor fusion in intelligent home

Jianqin Yin, G. Tian, Guodong Li
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引用次数: 3

Abstract

A novel scheme for object localization and tracking under family environment is presented based on fusion of multiple sensors, which include two laser sensors and camera sensors. The two laser sensors and two cameras are used to locate the object separately, and multiple sensors probability data association fusion algorithm is used to track the objects. Firstly, object detection is realized by laser sensors and vision sensors separately. Secondly, the laser data is fused by Extended Kalman Filter. To obtain the vision location results, background model is built by adaptive background updating based on motion history images. Background subtraction is used to acquire the original location result, which is filtered by Kalman Filter. Finally, multiple sensors probability data association fusion algorithm is used to fuse the different kinds of data. Experimental results show that the scheme can efficiently solve the problem of object localization and tracking.
智能家居中基于多传感器融合的目标定位与跟踪
提出了一种基于多传感器融合的家庭环境下目标定位与跟踪方案,该方案包括两个激光传感器和摄像头传感器。采用两个激光传感器和两个摄像头分别对目标进行定位,采用多传感器概率数据关联融合算法对目标进行跟踪。首先,利用激光传感器和视觉传感器分别实现目标检测。其次,采用扩展卡尔曼滤波对激光数据进行融合。为了获得视觉定位结果,采用基于运动历史图像的自适应背景更新方法建立背景模型。采用背景相减法获得原始定位结果,并进行卡尔曼滤波。最后,采用多传感器概率数据关联融合算法对不同类型的数据进行融合。实验结果表明,该方案能有效地解决目标定位和跟踪问题。
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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