基于模糊迁移学习模型的精度室内定位

IF 0.9 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Sheng Wu, Yanhu Ji, Licai Zhu, Liang Zhao, Hao Yang
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引用次数: 0

摘要

基于位置的服务极大地便利了人们的日常生活,这对不同环境下目标物体的位置计算提出了更高的要求。由于指纹定位方法不需要额外的专用设备,且易于实现,因此成为最具吸引力的解决方案之一。为了保证定位精度,这种方法需要对定位区域的指纹进行完整的采样,因此需要大量的采样成本。特别是当对多层建筑进行采样时,整个采样过程的工作量和时间会急剧增加。同时,某些楼层或房间可能不允许打开,因此他们的指纹无法采样。实际上,建筑物的楼层结构大多相似或相同,如写字楼、酒店等。为此,本文提出了一种模糊迁移学习模型,并构建了相应的原型系统FTLoc。该系统在保证不同楼层定位精度的前提下,大大降低了整栋建筑的采样成本。首先,针对某一楼层的完整指纹数据(源域),对指纹特征进行细粒度挖掘,生成每个采样点的短期特征集;然后,根据短期特征的稀疏性和时序性,我们设计了一个优化的SELSTM,并获得了一个有效的定位模型作为迁移学习的PreModel。最后,利用模糊聚类对源域数据和目标域数据添加类别标签,输入到PreModel中实现定位模型迁移,尽可能避免它们的数据分布差异影响迁移效果。FTLoc在多层建筑中得到了充分的验证。实验结果表明,当以一楼采样数据为源域时,相邻楼层(二楼)FTLoc系统的误差分别为1.38米(采样率为80%)和2.33米(采样率为30%)。非相邻层(三层、四层、五层)的平均误差分别为1.92 m(采样率为80%)和2.87 m(采样率为30%)。与传统移民相比,FTLoc系统分别增长了18.1%和12.6%。同时,实验验证了FTLoc系统在不同设备、不同采样密度下的误差抖动倍数不超过1.5。因此,本文设计的FTLoc系统保证了不同楼层的迁移学习效果,具有良好的鲁棒性和可靠性。在实际定位应用中,该系统大大降低了采样成本,同时实现了高精度定位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accuracy Indoor Localization Based on Fuzzy Transfer Learning Model
Location-based services greatly facilitate people’s daily life, which puts forward higher requirements for the location calculation of target objects in different environments. Since the fingerprint positioning method does not require additional special equipment and easy to implement, it has become one of the most attractive solutions. In order to ensure the positioning accuracy, this method requires complete sampling of the fingerprints of the positioning area, so a lot of sampling costs are required. In particular, when sampling buildings with multiple floors, the labor and time of the entire sampling process will increase dramatically. At the same time, certain floors or rooms may not be allowed to open, so their fingerprints cannot be sampled. In fact, the floor structures of buildings are mostly similar or the same, such as office buildings, hotels. Therefore, this paper proposes a fuzzy transfer learning model and builds the corresponding prototype system FTLoc. On the premise of ensuring the positioning accuracy of different floors, the system greatly reduces the sampling cost of the entire building. First, for the complete fingerprint data (source domain) of a certain floor, we mine the fingerprint features fine-grained to generate a short-term feature set for each sampling point. Then, according to the sparsity and timing of short-term features, we design an optimized SELSTM, and obtain an effective localization model as the PreModel for transfer learning. Finally, fuzzy clustering is used to add category labels to the source domain data and target domain data, and input them into PreModel to realize the localization model transfer, so as to avoid their data distribution differences affecting the transfer effect as much as possible. FTLoc is fully validated in a multi-storey building. According to the experimental results, when using the first floor sampling data as the source domain, the errors of the FTLoc system on the adjacent floor (second floor) are 1.38 meters (sampling rate = 80%) and 2.33 meters (sampling rate = 30%). The average errors in non-adjacent layers (three, four, five) are 1.92 meters (sampling rate = 80%), 2.87 meters (sampling rate = 30%). Compared with traditional migration, the FTLoc system increased by 18.1% and 12.6% respectively. At the same time, the experiment verified that the error jitter multiple of the FTLoc system under different devices and different sampling densities does not exceed 1.5. Therefore, the FTLoc system designed in this paper ensures the transfer learning effect of different floors, and has good robustness and reliability. In actual positioning applications, the system greatly reduces the sampling cost and achieves high-precision positioning at the same time.
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来源期刊
Scalable Computing-Practice and Experience
Scalable Computing-Practice and Experience COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.00
自引率
0.00%
发文量
10
期刊介绍: The area of scalable computing has matured and reached a point where new issues and trends require a professional forum. SCPE will provide this avenue by publishing original refereed papers that address the present as well as the future of parallel and distributed computing. The journal will focus on algorithm development, implementation and execution on real-world parallel architectures, and application of parallel and distributed computing to the solution of real-life problems.
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