A New Spatial Index Structure for Efficient Query Processing in Location Based Services Speaker: Yihao Jhang Adviser: Yuling Hsueh 2010 IEEE International.

Slides:



Advertisements
Similar presentations
The A-tree: An Index Structure for High-dimensional Spaces Using Relative Approximation Yasushi Sakurai (NTT Cyber Space Laboratories) Masatoshi Yoshikawa.
Advertisements

Finding the Sites with Best Accessibilities to Amenities Qianlu Lin, Chuan Xiao, Muhammad Aamir Cheema and Wei Wang University of New South Wales, Australia.
Ranking Outliers Using Symmetric Neighborhood Relationship Wen Jin, Anthony K.H. Tung, Jiawei Han, and Wei Wang Advances in Knowledge Discovery and Data.
Nearest Neighbor Search
CMU SCS : Multimedia Databases and Data Mining Lecture #7: Spatial Access Methods - Metric trees C. Faloutsos.
1 Top-k Spatial Joins
Danzhou Liu Ee-Peng Lim Wee-Keong Ng
Progressive Computation of The Min-Dist Optimal-Location Query Donghui Zhang, Yang Du, Tian Xia, Yufei Tao* Northeastern University * Chinese University.
Coverage Preserving Redundancy Elimination in Sensor Networks Bogdan Carbunar, Ananth Grama, Jan Vitek Computer Sciences Department Purdue University West.
Fast Algorithm for Nearest Neighbor Search Based on a Lower Bound Tree Yong-Sheng Chen Yi-Ping Hung Chiou-Shann Fuh 8 th International Conference on Computer.
Mario Rodriguez Revollo School of Computer Science, UCSP SlimSS-tree: A New Tree Combined SS- tree With Slim-down Algorithm Lifang Yang, Xianglin Huang,
Dave Lattanzi’s RRT Algorithm. General Concept Use dictionaries for trees Create a randomized stack of nodes Iterate through stack “Extend” each tree.
Preferential top-k search over local data dissertation thesis RNDr. Martin Šumák supervisor: doc. RNDr. Stanislav Krajči, PhD. consultant: RNDr. Peter.
1 Lecture 8: Data structures for databases II Jose M. Peña
Spatial Mining.
Indexing Network Voronoi Diagrams*
SASH Spatial Approximation Sample Hierarchy
Spatial Queries Nearest Neighbor Queries.
Techniques and Data Structures for Efficient Multimedia Similarity Search.
An Intelligent & Incremental Approach to kNN using R-trees DJ Oneil & Esten Rye (G01)
Euripides G.M. PetrakisIR'2001 Oulu, Sept Indexing Images with Multiple Regions Euripides G.M. Petrakis Dept.
Scalable Network Distance Browsing in Spatial Database Samet, H., Sankaranarayanan, J., and Alborzi H. Proceedings of the 2008 ACM SIGMOD international.
Distance Indexing on Road Networks A summary Andrew Chiang CS 4440.
Data Structure and access method Fan Zhang Zhiqi Chen.
Fast Subsequence Matching in Time-Series Databases Christos Faloutsos M. Ranganathan Yannis Manolopoulos Department of Computer Science and ISR University.
Indexing structures for files D ƯƠ NG ANH KHOA-QLU13082.
Roger ZimmermannCOMPSAC 2004, September 30 Spatial Data Query Support in Peer-to-Peer Systems Roger Zimmermann, Wei-Shinn Ku, and Haojun Wang Computer.
Indexing. Goals: Store large files Support multiple search keys Support efficient insert, delete, and range queries.
IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS 2007 (TPDS 2007)
Join-Queries between two Spatial Datasets Indexed by a Single R*-tree Join-Queries between two Spatial Datasets Indexed by a Single R*-tree Michael Vassilakopoulos.
VLDB '2006 Haibo Hu (Hong Kong Baptist University, Hong Kong) Dik Lun Lee (Hong Kong University of Science and Technology, Hong Kong) Victor.
WMNL Sensors Deployment Enhancement by a Mobile Robot in Wireless Sensor Networks Ridha Soua, Leila Saidane, Pascale Minet 2010 IEEE Ninth International.
SEMILARITY JOIN COP6731 Advanced Database Systems.
IEEE Globecom 2010 Tan Le Yong Liu Department of Electrical and Computer Engineering Polytechnic Institute of NYU Opportunistic Overlay Multicast in Wireless.
Reconstructing shredded documents through feature matching Authors: Edson Justino, Luiz S. Oliveira, Cinthia Freitas Source: Forensic Science International.
M- tree: an efficient access method for similarity search in metric spaces Reporter : Ximeng Liu Supervisor: Rongxing Lu School of EEE, NTU
Antonin Guttman In Proceedings of the 1984 ACM SIGMOD international conference on Management of data (SIGMOD '84). ACM, New York, NY, USA.
Data Management+ Laboratory V*-kNN: an Efficient Algorithm for Moving k Nearest Neighbor Queries Speaker: Adam Adviser: Yuling Hsueh 2009 IEEE International.
Data Management+ Laboratory Dynamic Skylines Considering Range Queries Speaker: Adam Adviser: Yuling Hsueh 16th International Conference, DASFAA 2011 Wen-Chi.
Nearest Neighbor Queries Chris Buzzerd, Dave Boerner, and Kevin Stewart.
Bounded relay hop mobile data gathering in wireless sensor networks
On Computing Top-t Influential Spatial Sites Authors: T. Xia, D. Zhang, E. Kanoulas, Y.Du Northeastern University, USA Appeared in: VLDB 2005 Presenter:
9/2/2005VLDB 2005, Trondheim, Norway1 On Computing Top-t Most Influential Spatial Sites Tian Xia, Donghui Zhang, Evangelos Kanoulas, Yang Du Northeastern.
A Quorum-Based Energy-Saving MAC Protocol Design for Wireless Sensor Networks Chih-Min Chao, Yi-Wei Lee IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2010.
Spatial Database 2/5/2011 Reference – Ramakrishna Gerhke and Silbershatz.
Multi-object Similarity Query Evaluation Michal Batko.
Euripides G.M. PetrakisIR'2001 Oulu, Sept Indexing Images with Multiple Regions Euripides G.M. Petrakis Dept. of Electronic.
R-Trees: A Dynamic Index Structure For Spatial Searching Antonin Guttman.
1 CSIS 7101: CSIS 7101: Spatial Data (Part 1) The R*-tree : An Efficient and Robust Access Method for Points and Rectangles Rollo Chan Chu Chung Man Mak.
Location-based Spatial Queries AGM SIGMOD 2003 Jun Zhang §, Manli Zhu §, Dimitris Papadias §, Yufei Tao †, Dik Lun Lee § Department of Computer Science.
A Bandwidth Scheduling Algorithm Based on Minimum Interference Traffic in Mesh Mode Xu-Yajing, Li-ZhiTao, Zhong-XiuFang and Xu-HuiMin International Conference.
A Load-Balanced Guiding Navigation Protocol in Wireless Sensor Networks Wen-Tsuen Chen Department of Computer Science National Tsing Hua University Po-Yu.
A Spatial Index Structure for High Dimensional Point Data Wei Wang, Jiong Yang, and Richard Muntz Data Mining Lab Department of Computer Science University.
Attribute Allocation in Large Scale Sensor Networks Ratnabali Biswas, Kaushik Chowdhury, and Dharma P. Agrawal International Workshop on Data Management.
1 Chapter 12: Indexing and Hashing Indexing Indexing Basic Concepts Basic Concepts Ordered Indices Ordered Indices B+-Tree Index Files B+-Tree Index Files.
Debrup Chakraborty Non Parametric Methods Pattern Recognition and Machine Learning.
Deploying Sensors for Maximum Coverage in Sensor Network Ruay-Shiung Chang Shuo-Hung Wang National Dong Hwa University IEEE International Wireless Communications.
Junchao Ma +, Wei Lou +, Yanwei Wu *, Xiang-Yang Li *, and Guihai Chen & Energy Efficient TDMA Sleep Scheduling in Wireless Sensor Networks + Department.
CMU SCS : Multimedia Databases and Data Mining Lecture #7: Spatial Access Methods - Metric trees C. Faloutsos.
Rethinking Choices for Multi-dimensional Point Indexing You Jung Kim and Jignesh M. Patel University of Michigan.
Zijian Wang, Eyuphan Bulut, and Boleslaw K. Szymanski Center for Pervasive Computing and Networking and Department of Computer Science Rensselaer Polytechnic.
/ 24 1 Deploying Wireless Sensors to Achieve Both Coverage and Connectivity Xiaole Bai Santosh Kumar Dong Xuan Computer Science and Engineering The Ohio.
ITEC 2620M Introduction to Data Structures Instructor: Prof. Z. Yang Course Website: ec2620m.htm Office: TEL 3049.
Mehdi Kargar Department of Computer Science and Engineering
2010 IEEE Global Telecommunications Conference (GLOBECOM 2010)
Indexing Goals: Store large files Support multiple search keys
Practical and Secure Nearest Neighbor Search on Encrypted Large-Scale Data Source : IEEE INFOCOM IEEE International Conference on Computer Communications,
Definition In simple terms, an algorithm is a series of instructions to solve a problem (complete a task) We focus on Deterministic Algorithms Under the.
Nearest-Neighbor Classifiers
Presented by: Mahady Hasan Joint work with
Presentation transcript:

A New Spatial Index Structure for Efficient Query Processing in Location Based Services Speaker: Yihao Jhang Adviser: Yuling Hsueh 2010 IEEE International Conference on Sensor Networks, Ubiquitous, and Trustworthy Computing 1

Outline Introduction Related work –Grid Index –B + -tree ISGrid Query Processing Experiment Conclusion 2

Introduction A new spatial index structure. ISGrid provides better efficient query processing than R-tree. ISGrid is a grid structure that provides direct accesses to data and uses Minimum Boundary Rectangle(MBR) as a leaf node. 3

Grid index Grid is a regular tessellation of a 2-D surface that divides it into a series of contiguous cells, which can then be assigned unique identifiers and used for spatial indexing purposes. 4

B + -tree B+-tree is a tree structure. It usually employed in database or file operating system. It has the link to point to the closer data and allow quick sequence read the data. 5

ISGrid Configuration of ISGrid 6

ISGrid(cont.) 7

How to choose neighbor nodes? –Traditional: the order of the distance. (x) –Best method: Voronoi Diagram 8

Query Processing k-NN Queries –STEP 1: Searching the nearest leaf node to the query point using the grid index. –STEP 2: Searching the k-NNs through visiting the neighbor node entry. 9

Query Processing(cont.) 10 STEP1 STEP2

Query Processing(cont.) Range Queries –STEP1: Searching the nearest leaf node to the query point using the grid index. –STEP2: Searching the objects within a certain range using the neighbor node information. 11

Query Processing(cont.) 12 STEP1 STEP2

Experiment Performance of k-NN query processing. 13

Experiment(cont.) Performance of continuous k-NN by CNNS. 14

Conclusions Authors proposed an index structure, called ISGrid. ISGrid provides efficient continuous k-NN query processing in the environment for static objects and moving queries. 15

Thank you for Listening! 16