上海交通大学学报(英文版) ›› 2015, Vol. 20 ›› Issue (5): 548-557.doi: 10.1007/s12204-015-1662-3
HUANG Zheng-yong* (黄正勇), YU Hui (俞 晖), GUAN Yun-feng (管云峰), CHEN Kun (陈 坤)
发布日期:
2015-10-29
通讯作者:
HUANG Zheng-yong (黄正勇)
E-mail:zhengyonghuang@sjtu.edu.cn
HUANG Zheng-yong* (黄正勇), YU Hui (俞 晖), GUAN Yun-feng (管云峰), CHEN Kun (陈 坤)
Published:
2015-10-29
Contact:
HUANG Zheng-yong (黄正勇)
E-mail:zhengyonghuang@sjtu.edu.cn
摘要: Fingerprint matching is adopted by a large family of indoor localization schemes, where collecting fingerprints is inevitable but all consuming. While the increasingly popular crowdsourcing based approach provides an opportunity to relieve the burden of fingerprints collecting, a number of formidable challenges for such an approach have yet been studied. For instance, querying in a large fingerprints database for matching process takes a lot of time and calculation; fingerprints collected by crowdsourcing lacks of robustness because of heterogeneous devices problem. Those are important challenges which impede practical deployment of the fingerprint matching indoor localization system. In this study, targeting on effectively utilizing and mining large amount fingerprint data, enhancing the robustness of fingerprints under heterogeneous devices’ collection and realizing the real time localization response, we propose a crowdsourcing based fingerprints collecting mechanism for indoor localization systems. With the proposed approach, massive raw fingerprints will be divided into small clusters while diverse devices’ uploaded fingerprints will be merged for overcoming device heterogeneity, both of which will contribute to reduce response time. We also build a mobile cloud testbed to verify the proposed scheme. Comprehensive real world experiment results indicate that the scheme can provide comparable localization accuracy.
中图分类号:
HUANG Zheng-yong* (黄正勇), YU Hui (俞 晖), GUAN Yun-feng (管云峰), CHEN Kun (陈 坤). Indoor Localization with a Crowdsourcing Based Fingerprints Collecting[J]. 上海交通大学学报(英文版), 2015, 20(5): 548-557.
HUANG Zheng-yong* (黄正勇), YU Hui (俞 晖), GUAN Yun-feng (管云峰), CHEN Kun (陈 坤). Indoor Localization with a Crowdsourcing Based Fingerprints Collecting[J]. Journal of shanghai Jiaotong University (Science), 2015, 20(5): 548-557.
[1] | Kuo S P, Tseng Y C. A scrambling method for fingerprint positioning based on temporal diversity and spatial de endency [J]. Knowledgeand Data Engineering,2008, 20(5): 678-684. |
[2] | Jin Y, Soh W S, Wong W C. Indoor localization with channel impulse response based fingerprint and nonparametric regression [J]. Wireless Communications,2010, 9(3): 1120-1127. |
[3] | Xiang Z, Song S, Chen J, et al. A wireless lan-based indoor positioning technology [J]. IBM Journal of Research and Development, 2004, 48(5/6): 617-626. |
[4] | Kao K F, Liao I E, Lyu J S. An indoor locationbased service using access points as signal strength data collectors [C]//2010 International Conference on Indoor Positioning and Indoor Navigation (IPIN).Banff, Canada: IEEE, 2010: 1-6. |
[5] | Haeberlen A, Flannery E, Ladd A M, et al. Practical robust localization over large-scale 802. 11 wireless networks [C]//Proceedings of the 10th Annual International Conference on Mobile Computing and Networking.PA, USA: ACM, 2004: 70-84. |
[6] | Krumm J, Horvitz E. Locadio: Inferring motion and location from wifi signal strengths [C]//2th EAI International Conference on Mobile and Ubiquitous Systems:Computing, Networking and Services. Boston,USA: IEEE, 2004: 4-13. |
[7] | Bhasker E S, Brown S W, Griswold W G.Employing user feedback for fast, accurate, lowmaintenance geolocationing [C]//Proceedings of the Second IEEE Annual Conference on Pervasive Computing and Communications. Orlando, USA: IEEE,2004: 111-120. |
[8] | Bolliger P. Redpin-adaptive, zero-configuration indoor localization through user collaboration[C]//Proceedings of the First ACM International Workshop on Mobile Entity Localization and Tracking in GPS-less Environments. San Francisco, USA:ACM, 2008: 55-60. |
[9] | Park J G, Charrow B, Curtis D, et al. Growing an organic indoor location system [C]//Proceedings of the 8th International Conference on Mobile Systems,Applications, and Services. San Francisco, USA: ACM,2010: 271-284. |
[10] | Dudin E, Smetanin Y G. A review of cloud computing[J]. Scientific and Technical Information Processing,2011, 38(4): 280-284. |
[11] | Zaruba G V, Huber M, Kamangar F, et al. Indoor location tracking using RSSI readings from a single wifi access point [J]. Wireless Networks, 2007, 13(2):221-235. |
[12] | Seco F, Plagemann C, Jimenez A R, et al. Improving RFID-based indoor positioning accuracy using Gaussian processes [C]//2010 International Conference on Indoor Positioning and Indoor Navigation(IPIN). Banff, Canada: IEEE, 2010: 7-15. |
[13] | Park J G, CurtisD, Teller S, et al. Implications of device diversity for organic localization [C]//The 29th Conference on Computer Communications. Shanghai,China: IEEE, 2011: 3182-3190. |
[14] | Botev Z, Grotowski J, Kroese D. Kernel density estimation via diffusion [J]. The Annals of Statistics,2010, 38(5): 2916-2957. |
[15] | Feng C, Au W S A, Valaee S, et al. Compressive sensing based positioning using RSS of WLAN access points [C]//The 29th Conference on Computer Communications.San Diego, USA: IEEE, 2010: 1-9. |
[16] | Frey B J, Dueck D. Clustering by passing messages between data points [J]. Science, 2007, 315(5814):972-976. |
[1] | LI Dan (李丹), NIU Zhongbin (牛中彬), PENG Dongxu (彭冬旭) . Magnetic Tile Surface Defect Detection Based on Texture Feature Clustering[J]. Journal of Shanghai Jiao Tong University (Science), 2019, 24(5): 663-670. |
[2] | SONG Huilin (宋慧琳), PENG Diyun (彭迪云), HUANG Xin *(黄欣), FENG Jun (冯俊). Research on Weibo Hotspot Finding Based on Self-Adaptive Incremental Clustering[J]. Journal of Shanghai Jiao Tong University (Science), 2019, 24(3): 364-371. |
[3] | ZHANG Ying (张颖), LI Peisong (李培嵩), MAO Lin (毛林). Research on Improved Low-Energy Adaptive Clustering Hierarchy Protocol in Wireless Sensor Networks[J]. Journal of Shanghai Jiao Tong University (Science), 2018, 23(5): 613-619. |
[4] | WU Shaochun (吴绍春), PANG Yijie (庞毅杰), SHAO Sen (邵森), JIANG Keyuan (江科元). Advanced Fuzzy C-Means Algorithm Based on Local Density and Distance[J]. Journal of Shanghai Jiao Tong University (Science), 2018, 23(5): 636-642. |
[5] | MA Jiayi (马嘉翊), HAO Cong (郝聪), WANG Kundong (王坤东). Decomposing and Cluster Refinement Design Method for Application-Specific Network-on-Chips[J]. sa, 2018, 23(2): 235-243. |
[6] | HU Jing* (胡静), LUO Yiyuan (罗宜元). Integration of Learning Algorithm on Fuzzy Min-Max Neural Networks[J]. 上海交通大学学报(英文版), 2017, 22(6): 733-741. |
[7] | LI Xin* (李鑫), ZHOU Wei (周巍), JIANG Wen (蒋雯). Rigid Sensor Allocation and Placement Technique for Reducing the Number of Sensors in Thermal Monitoring[J]. 上海交通大学学报(英文版), 2017, 22(4): 481-492. |
[8] | YANG Zhengwu (杨政武), HUO Hong (霍宏), FANG Tao*(方涛). Automatically Finding the Number of Clusters Based on Simulated Annealing[J]. 上海交通大学学报(英文版), 2017, 22(2): 139-147. |
[9] | ZENG Bin* (曾 斌), YAO Lu (姚 路), HU Wei (胡 炜). Priority Based Data Reporting Algorithm in Wireless Sensor Networks[J]. 上海交通大学学报(英文版), 2017, 22(1): 60-065. |
[10] | ZHAO Xiao-qiang* (赵小强), ZHOU Jin-hu (周金虎). Improved Kernel Possibilistic Fuzzy Clustering Algorithm Based on Invasive Weed Optimization[J]. 上海交通大学学报(英文版), 2015, 20(2): 164-170. |
[11] | MAO Li1 (毛力), SONG Yi-chun1* (宋益春), LI Yin1 (李引),YANG Hong2 (杨弘), XIAO Wei2 (肖炜). Research of Improved Fuzzy c-means Algorithm Based on a New Metric Norm[J]. 上海交通大学学报(英文版), 2015, 20(1): 51-55. |
[12] | XING Yu-xuan1* (邢玉轩), XIAO Nong1 (肖侬), LIU Fang1 (刘芳), SUN Zhen1 (孙振), HE Wan-hu. AR-Dedupe: An Efficient Deduplication Approach for Cluster Deduplication System[J]. 上海交通大学学报(英文版), 2015, 20(1): 76-81. |
[13] | CAO Wei (曹威), MA Ying-xin (马英鑫), YIN Wei-hai* (殷卫海). Synchrotron Radiation X-Ray Inducing a Significant Increase in the CD38 Level of Rodent Testes by Generating Oxidative Stress[J]. 上海交通大学学报(英文版), 2014, 19(6): 669-674. |
[14] | XU Li-qing (许丽卿), CHEN Hao* (陈 豪). Can the Polynomial Based Key Predistribution Scheme Be Used Many Times in One Wireless Sensor Network Key Establishment Protocol?[J]. 上海交通大学学报(英文版), 2013, 18(3): 376-384. |
阅读次数 | ||||||
全文 |
|
|||||
摘要 |
|
|||||