Based on various existing wireless fingerprint location algorithms in intelligent sports venues, a high-precision and fast indoor location algorithm improved weighted k-nearest neighbor (I-WKNN) is proposed. In order to meet the complex environment of sports venues and the demand of high-speed sampling, this paper proposes an AP selection algorithm for offline and online stages. Based on the characteristics of the signal intensity distribution in intelligent venues, an asymmetric Gaussian filter algorithm is proposed. This paper introduces the application of the positioning algorithm in the intelligent stadium system, and completes the data acquisition and real-time positioning of the stadium. Compared with traditional WKNN and KNN algorithms, the I-WKNN algorithm has advantages in fingerprint positioning database processing, environmental noise adaptability, real-time positioning accuracy and positioning speed, etc. The experimental results show that the I-WKNN algorithm has obvious advantages in positioning accuracy and positioning time in a complex noise environment and has obvious application potential in a smart stadium.
翻译:根据智能体育场现有各种无线指纹定位算法,提出了高精度和快速室内定位算法,改进了加权K-最近邻(I-WKNNN),以满足体育场的复杂环境和高速取样需求,本文件提出了离线和在线阶段的AP选择算法,根据智能体育场信号强度分布的特点,提出了不对称高斯过滤算法。本文介绍了智能体育场系统定位算法的应用,并完成了体育场的数据获取和实时定位。与传统的WKNN和KNNN算法相比,I-WKN算法在指纹定位数据库处理、环境噪音适应、实时定位精度和定位速度等方面具有优势。实验结果表明,I-WKNN算法在复杂噪音环境中定位准确性和定位时间方面具有明显优势,在智能体育场具有明显的应用潜力。