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2nd Joined Advanced Student School

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2nd Joined Advanced Student School Ubiquitous Tracking based AR-Setups Benjamin Fingerle Christian Wachinger – PowerPoint PPT presentation

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Title: 2nd Joined Advanced Student School


1
2nd Joined Advanced Student School
  • Ubiquitous Tracking based AR-Setups
  • Benjamin Fingerle
  • Christian Wachinger

2
Procedure
  • We will present a scenario in which a user -
    Gerhard - gets into the benefits of an AR-enabled
    Environment
  • First the scenario will be presented from the
    users perspective
  • In a 2nd stage well look behind the surface and
    see how the AR-environment can be modeled using
    the DWARF Service concept
  • Finally well go even deeper into detail and
    present how spatial relationships of objects can
    be represented using the Ubiquitous Tracking
    Framework

3
The Users Equipment
  • Gerhard wears an Optical See Through Head Mounted
    Display (OST-HMD)
  • Up on this HMD two 6DOF markers - one optical,
    one magnetic - are rigidly mounted
  • Additionally a stereo-vision camera is installed
    on top of his head
  • Gerhard wears special gloves with attached
    optical 6DOF markers

4
A Day in Gerhards Life
  • Gerhard strolls down the TUM hallway greeting
    colleagues of his through closed doors
  • Eventually he reaches his own office and steps in
  • Sitting down in front of the desk he reads a
    virtual message of his Russian friend Vladimir
    from St. Petersburg asking for a chess game
  • He starts the RemoteChess application whereupon a
    virtual chess board appears aligned on the desk
    and the virtual counterpart of Vladimir takes a
    seat across from him

5
A Day in Gerhards Life
  • Suddenly an emergency request for instant help by
    his befriended Spanish colleague José shows up
  • José asks Gerhard - a renowned surgeon - for
    advises regarding a difficult surgery José is
    currently conducting
  • Just where a minute ago the chess board was
    visible a 3D - Model showing the patient crops up
  • Gerhard studies the patient while having a look
    from different sides and getting computer
    tomography images registered on the patient on
    demand
  • In vivid discussion with José a life is saved

6
The Scenario Can Be Modeled With Services
  • Services
  • Have needs
  • Refined by predicates
  • Offer abilities
  • Refined by attributes
  • Connectors
  • Offer interfaces for data exchange
  • Service Managers
  • One for each network node
  • Detect mutually satisfying services
  • Provide services with connectors

ltservice nameOpticalTrackergt ltneed
namevideo typeVideoStreamgt ltconnector
protocolsharedMemorygt lt/needgt ltneed
namemarker typeMarkerDatagt ltconnector
protocolObjectReferencegt lt/needgt ltability
namemarkerPose typePoseDatagt ltattribute
namelocation value(marker.location)gt lt
attribute nameidentity value(marker.ident
ity)gt ltconnector protocolNotificationPushgt
lt/abilitygt lt/servicegt
Context location, identity, activity, time
can be modeled using Predicates and Attributes
7
Services are Specified Using XML
  • ltservice nameHMDOpticalTrackergt
  • ltneed name
  • ...
  • lt/needgt
  • ltability nameHeadPose typePoseDatagt
  • ltattribute namelocation
  • value(landmark.location)gt
  • ltattribute nameidentity
  • valueGerhardgt
  • ltconnector protocolNotificationPushgt
  • lt/abilitygt
  • ltability namemarkerPose typePoseDatagt
  • ...
  • lt/abilitygt
  • lt/servicegt

8
Hallway Services
Service Name Needs Abilities
GerhardConfigData -- landmarkDescription
HallwayConfigData -- landmarkDescription
HMDCamera -- videostream
HMDOpticalTracker videostream markerPose, HMDPose
HMDVideoShow videostream --
WhatsBehind pose videostream
ContextEstimator landmark context
9
Office Services
Service Name Needs Abilities
GerhardConfigData -- landmarkDescription
HMDCamera -- videostream
HMDOpticalTracker videostream markerPose, HMDPose
HMDVideoShow videostream --
ContextEstimator landmark context
RoomConfigData -- landmarkDescription
RoomCamera -- videostream
roomMagneticTracker landmark markerPose
roomOpticalTracker videostream markerPose
Table 3D-content --
VirtualChess chessPartner 3D-content
VirtualSurgery handPose 3D-content
VirtualCommunication communicationPartner 3D-content
10
Mutually Satisfying Services are Found by
ServiceManager
  • For each network node (e.g. Room, Hall, ) one
    ServiceManager exists
  • This ServiceManager observes needs and abilities
    of those services belonging to his particular
    network node
  • When a match is found the ServiceManager provides
    all involved parties with connector-objects
  • These connectors offer push-, pull-, or shared
    memory access to abilities via various interfaces

11
Matching of Mutually Satisfying Services
12
Ubiquitous Tracking - The Formal Layer
  • The crucial problem of Augmented Reality
    applications is the correct tracking of objects
  • It is common to integrate the tracking procedure
    into the application
  • Different tracking technologies are combined to
    get better results
  • To release the AR application of tracking and to
    enable a seamless integration of new tracking
    devices a formal layer is introduced
  • The formal framework, called UbiquitousTracking,
    forms the formal layer

13
Ubiquitous Tracking The Formal Framework
  • Requests to the framework about the spatial
    relationship of objects can be send
  • The answer delivers the optimal relationship
    available
  • Graph-model
  • nodes objects
  • edges spatial relationships

14
Ubiquitous Tracking - The Underlying Graph Model
  • Properties of a spatial relationship
  • Represents the transformation and translation of
    the source coordinate system to the target
    coordinate system
  • Attributes characterizing the quality of the
    relationship
  • Three different types of graphs
  • Real relationship graph
  • Measured relationship graph
  • Inferred Relationship

15
Real Relationship Graph
  • Each pair of objects has at every point of time a
    geometric relationship

16
Measured Relationship Graph
  • Estimates of relationships are just available for
    certain objects for discrete points of time
  • Additionally Attributes characterizing the
    quality of the measurement exist
  • Error function describing
  • the quality of a relationship

17
Inferred Relationship Graph
  • Knowledge about spatial relationships not just
    for discrete points of time is necessary
  • Knowledge has to be inferred about the
    relationship of objects
  • Error functions help to find optimal inferences

18
A Possible Graph in our Scenario
RoomCam
Landmark
HeadCam
Drawing on th flipchart Add. Edges for magnetic
tracker
19
What Is a Good Error Function?
  • Aim Finding optimal paths in the graph!
  • Latency,
  • Update frequency
  • Confidence value
  • Pose accuray
  • Time to live

20
Optimisation of Graph Algorithms
  • Precomputing the Data Flow Graphs
  • Infrequently changing structure of the spatial
    relationships
  • Infrequently changing Attributes
  • No dependency on the pose measurements
  • Grouping Nodes
  • Several nodes can be represented by a single
    supernode
  • Enabling level of detail hierarchies
  • ? Faster graph search
  • What is the coordinate system of the new
    supernode?

21
Security Safety Aspects
  • What if the WhatsBehind Service can be used in
    front of every door?
  • What if your boss knows what you have done this
    weekend?
  • What if other users know about every place where
    you have been this week?
  • What if Indra the intern uses the AR setup of
    Gerhard?
  • What if Eve corrupts the data showing you the
    false distance to the oncoming bus?
  • What if you cant see the car because the latest
    sports news occluded it?

Privacy Restrictions Authenticity
22
Finding Matches Forms Crucial Performance Issue
  • Matching problem of high computational complexity
  • One Service Manager for each Network Node
  • Number of potential matchings grows exponentially
    with the number of services available inhibiting
    scalability
  • Different strategies for coping with this issue
    could include
  • Heuristics, based on context information,
    realized as graph searches on the spatial
    relationship graph
  • Interpretation of matching problem as predicate
    logic formula, applying specialized algorithms
    known from model checking

23
Issues Concerning Graph Representation
  • Possible ways of storing the spatial relationship
    graph include
  • One graph-service holding the complete Graph
  • all graph algorithms applicable- contradicts
    the distributed computing paradigm
  • Each Service knows its adjacency
  • complies with distributed computing paradigm
  • - not all graph algorithms applicable

24
Issues Concerning Access to the Graph Information
  • Possible ways of accessing spatial relationships
    include
  • Request formulated as need for spatialRelationship
    with predicates source and target, abilities
    offered by
  • Certain GraphInformationServices
  • Graph can be split up between different such
    services
  • - different graph search strategies for the same
    relation cannot coexist
  • One service for each relationship instantiated by
    special relationShipGenerators
  • relationships instantly available
  • - different graph search strategies for the same
    relation cannot coexist
  • - number of services raises dramatically
  • Requesting a graphInformerObject providing an
    interface getSpatialRelationShip(source, target)
  • Objects implementing different graph searches
    can coexist
  • - centralization

25
Open Questions
  • How much information about the world do we have
    to put in the error function?
  • Which graph algorithms have to be applicable?
  • Which graph representation allows theses
    algorithms?
  • How to perform context changes?
  • How to enable new users to enter AR environments?
  • What has then to be calibrated?

26
Critical success factors
  • Number of AR ready buildings
  • Development and acceptance of standards
  • Prices and convenience
  • Legal issues
  • Products and applications urging the user to buy
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