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Querying Mobile Objects in Spatio-Temporal Databases

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Title: Querying Mobile Objects in Spatio-Temporal Databases


1
Querying Mobile Objects in Spatio-Temporal
Databases
  • Kriengkrai Porkaew1
  • Iosif Lazaridis2
  • Sharad Mehrotra2
  • 1 King Monkuts University of Technology
  • at Thonburi, Thailand
  • 2 University of California, Irvine
  • SSTD 2001, Redondo Beach, CA

2
Talk Outline
  • Related Work
  • Query Types over Mobile Objects
  • Indexing Query Evaluation Strategies
  • Native Space Indexing (NSI)
  • Parametric Space Indexing (PSI)
  • Experiments
  • Conclusions

3
Motivation - VGIS
  • VGIS
  • a 3D terrain visualization system
  • Data
  • terrain, weather data, static dynamic 3D
    objects
  • Functionality
  • spatio-temporal queries over mobile objects

4
Update Model
  • Linear Motion with constant velocity
  • Update consists of ltts, te, xi, vigt
  • Next update arrives at time of previous updates
    expiration te.
  • Both historical and future queries are supported

location
time
5
Related Work
  • Spatio-Temporal Index Structures
  • Theodoridis et. al. SSDBM 1998 Specifications
    for Efficient Indexing in Spatio-Temporal
    Databases
  • Indexing Mobile Objects
  • Tayeb et. al. Computer Journal 41(3) A quadtree
    based dynamic attribute indexing method
  • Kollios et. al. PODS 1999 On Indexing Mobile
    Objects
  • Saltenis et. al. SIGMOD 2000 Indexing the
    Positions of Continuously Moving Objects
  • General
  • Wolfson et. al. SSDBM 1998 Moving Objects
    Databases Issues and Solutions
  • Focus of Current Techniques
  • Future Spatio-Temporal Range Queries

6
Query TypesSpatial/Temporal Range
location
Q.xH
Q.xL
time
Q.tH
Q.tL
Which objects were in spatial range Q.xL,Q.xiL
during time interval Q.tL,Q.tL?
7
Query TypesTemporal kNN
location
Q.xH
Q.xL
time
Q.t
k top objects closest temporally to query time
Q.t that lie in spatial range Q.xL, Q.xH,
ordered by time
8
Query TypesSpatial kNN
location
Q.x
1
time
Q.tL
Q.tH
k top objects closest spatial to query location
Q.x during time interval Q.tL, Q.tH, ordered
by proximity
9
Indexing ApproachesNative Space Indexing (NSI)
  • represents objects with bounding boxes in native
    space (time/location)
  • bounding box ltL,Hgt
  • L R.tL,R.x1L,,R.xnL HR.tH,R.x1H,,R.xnH
  • To eliminate false admission
  • line-segment lts,egt
  • sO.ts,O.x1s,,O.xns eO.te,O.x1e,,O.xne

10
Native Space IndexingRange Query
  • Range Query Q
  • For a Bounding Box R
  • if overlaps (Q, R), i.e., Q overlaps with R along
    the temporal and all spatial dimensions ??
    explore node
  • For a line segment L
  • if L does not overlap with Q in time ? ignore
  • else

11
Native Space IndexingRange Query Line Segment
location
TiQ.T? O.T ? Li.T T ?i Ti If T is empty,
ignore Else retrieve
Q.xiH
Q.xiL
time
time
Li.Ttime interval that the line of the object
cuts the upper/lower boundary of the query along
dimension i
12
k Nearest Neighbor Algorithm
Priority Queue
answer
h
f
g
13
Native Space IndexingTemporal kNN
  • Temporal kNN query ltQ.t Q.xiL, Q.xiHgt
  • retrieve objects in ltQ.xiL, Q.xiHgt with minimum
    tQ.t-O.t
  • explore nodes in ascending order of t using a
    priority queue
  • Bounding Box testing
  • for each i, if R.xiL, R.xiH not overlap Q.xiL,
    Q.xiH ? ignore
  • else, compute t and insert ltt, Rgt in the priority
    queue

14
Native Space IndexingTemporal kNN Line Segment
location
Ti O.T ? Li.T Tov ?i Ti
time
15
Native Space IndexingSpatial kNN
  • Spatial kNN query ltQ.tL, Q.tH Q.xigt
  • retrieve the k nearest objects to Q.xi during the
    time interval Q.tL, Q.tH
  • explore node in ascending order of d distance
    from Q.xi
  • Bounding Box testing
  • if R.tL, R.tH not overlap Q.tL, Q.tH ?
    ignore R
  • else, compute d mindist (P, Q) ?I di21/2

Bounding Box
Line Segment
xi
diR.xL-Q.xH
di0
Q.xi
di Q.xL-R.xH
time
16
Indexing ApproachesParametric Space Indexing
(PSI)
  • represent objects with their motion parameters
  • time ltts, tegt
  • starting location O.xi
  • velocity O.vi
  • Location Function
  • O.xi(t)O.xiO.vi(t - O.ts)
  • where ts ? t ? te
  • Bounding box R
  • lttL,xiL,viL tH,xiH,viHgt

Location (x)
Time (t)
Velocity (v)
Spatio-temporal Query (projected on a bounding
box)
  • Historical Queries feasible since past segments
    are kept in index
  • Maximum locality since ts the time reference of
    the most recent update is used

17
Parametric Space IndexingRange Query
  • Bounding Box testing
  • if Q.tL,Q.tH not overlap R.tL,R.tH ? ignore
    R
  • else compute time interval tov,i that R overlaps
    Q in the native space along dimension i
  • Tov,iTi ? Q.T ? R.T
  • if Tov,I is not empty on all dimensions, then
    explore R, else ignore it

location
viH
R
viL
time
18
Parametric Space IndexingTemporal kNN
Q.t
location
  • Bounding Box testing
  • compute time interval Tov,i that R overlaps Q in
    the native space along dimension i
  • Tov,i Ti ? R.T
  • Tov ?i Ti

viH
Bounding Box R
viL
time
19
Parametric Space IndexingSpatial kNN
Query
Q.xi
xi
di
  • First, compute the temporal overlap
  • K.T Q.T ? R.T
  • Then, compute Si the extent of R in dimension i
    within the time range K.T
  • Compute spriority by taking the mindist of the
    query point Q.xi and the range Si and summing up
    over all dimensions

viH
Si
Bounding Box R
Spriority ?i di21/2
time
20
Experiments
  • Data
  • 5,000 mobile objects moving in a 100x100 grid
  • Objects send 1 update/time unit
  • Simulations with 1, 2, 4 velocity units were run
  • Duration of simulation 100 time units (500,000
    line segments in index)
  • Queries
  • Ranges of sizes 0.25 to 10 along each spatial
    dim.
  • Average results over 1,000-query loads

21
Range QueriesI/O Cost
22
Range QueriesCPU Cost
23
Range QueriesVarying Object Speed
24
Temporal kNNI/O Cost
25
Spatial kNNI/O Cost
26
Interpretation
  • Parametric Space Indexing
  • compact representation
  • no false alarms
  • - need transformation
  • - not so good locality
  • - specific to the type of motion used
  • Native Space Indexing
  • good locality
  • general for all kinds of motions linear,
    circular, constant speed, constant acceleration
  • easy to deal with
  • - highly overlapped boxes

27
Conclusions
  • Classification of selection queries over mobile
    objects with range or nearest neighbor predicate
    on space/time
  • Query processing techniques using two indexing
    approaches Native and Parametric-Space Indexing
  • Native Space Indexing outperforms Parametric
    Space Indexing besides being conceptually simpler
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