Chengyang Li, Yang Yang, Lin Bai, Bei Yu, Caili Guo, Hailun Xia
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引用次数: 0
摘要
本文提出了一种用于可见光定位系统的相机辅助接收信号强度(CA-RSS)算法。CA-RSS的基本思想是同时利用可见光的视觉和强度信息,以低成本实现精确定位。矩形LED布局时,无论LED的方向如何,都可以估计出可见光的辐照角。根据估计的辐照角,得到了led与接收机之间的距离。然后,利用线性最小二乘法可以低成本地计算出接收机的二维位置。在立体几何理论的基础上,进一步提出了三维定位的独立求解方法,避免了依赖求解方法的误差传播问题。此外,针对实际中存在的不完全信道模型,提出了一种实用的朗伯模型标定方法。仿真结果表明,无论led和接收器的方向如何,该方法都可以实现小于10 cm的80百分位精度。此外,实验结果表明,该算法在70 cm × 70 cm × 140 cm空间内的平均三维定位误差为4.48 cm。
Camera Assisted Received Signal Strength Algorithm for Indoor Visible Light Positioning
In this paper, a camera assisted received signal strength (CA-RSS) algorithm is proposed for visible light positioning (VLP) systems. The basic idea of CA-RSS is to simultaneously utilize visual and strength information of visible lights to achieve accurate positioning at low cost. With rectangular LED layout, the irradiance angles of the visible lights can be estimated regardless of the orientations of the LEDs. Based on the estimated irradiance angles, the distances between the LEDs and the receiver are obtained. Then, the two-dimensional (2D) position of the receiver can be calculated at low cost using a linear least square method. Based on the solid geometry theory, we further propose an independent solution method for three-dimensional (3D) positioning, which can avoid error propagation issue of dependent solution method. Moreover, considering the imperfect channel model in practice, we propose a calibration method of Lambertian model for practical uses. Simulation results show that the proposed approach can achieve 80th percentile accuracies of less than 10 cm for 3D positioning regardless of the orientations of the LEDs and the receiver. In addition, experimental results show that the proposed algorithm achieves an average 3D positioning error of 4.48 cm in a 70 cm × 70 cm × 140 cm space.