Body detection, tracking and analysis ETEAM - PowerPoint PPT Presentation

1 / 40
About This Presentation
Title:

Body detection, tracking and analysis ETEAM

Description:

... pattern also helps in recognizing human events of more people and unusual ... Human action recognition: Tracking results will be combined with activity models ... – PowerPoint PPT presentation

Number of Views:199
Avg rating:3.0/5.0
Slides: 41
Provided by: wwwroc
Category:

less

Transcript and Presenter's Notes

Title: Body detection, tracking and analysis ETEAM


1
Body detection, tracking and analysisE-TEAM
  • Participants (9)
  • FORTH, ACV, BILKENT, SZTAKI, ICG, University of
    Amsterdam, University of Surrey, Technion, UPC
  • E-Team Leader Montse Pardàs (Cristian Cantón)
    (UPC)

2
Participants
  • FORTH Antonis Argyros, Panos Trahanias
  • ACV Herbert Ramoser
  • Bilkent Ugur Gudukbay, Enis Cetin, Yigithan
    Dedeoglu, B. Ugur Toreyinç
  • SZTAKI Tamas Sziranyi
  • ICG Horst Bischof
  • University of Amsterdam Thang Pham, Michiel van
    Liempt, Arnold Smeulders
  • University of Surrey Bill Christmas
  • Technion/MM E.Rivlin, M. Rudzsky
  • UPC Montse Pardas, Jose Luis Landabaso, Cristian
    Canton

3
Description
  • Relevant to WP5 (Single modality processing) and
    WP11 (Integration and Grand Challenges Detecting
    and interpreting humans and human behaviour in
    videos)
  • Objective To increase collaboration in
  • Body detection. Using for instance background
    learning techniques in both single and
    multi-camera environments. Persons will be
    identified by means of classification techniques.
  • Body tracking. By means of models (e.g.,
    templates, 3D models, classifiers) and
    appropriate motion prediction.
  • Body analysis. Body models are being used for
    analysis and tracking. They can range from simple
    to complex models, depending on the applications.

4
UPC application smart rooms
  • Object localization and tracking task in indoor
    environments surveyed by multiple fixed cameras

5
UPC Detection and tracking
  • The method uses a foreground separation process
    at each camera, based on Stauffer and Grimson
    background learning
  • A 3D-foreground scene is modeled and discretized
    into voxels making use of all the segmented views
  • Voxels are grouped into blobs
  • Color information together with other
    characteristic features of 3D object appearances
    are temporally tracked using a template-based
    technique

6
UPC 3D Blob Extraction
7
UPC Body and gesture analysis
  • Aim obtain the body posture of several people
    present in a room.
  • Many pattern analysis challenges can be addressed
    in this framework
  • Gesture analysis
  • Scence understanding and classification (who is
    doing what? i.e. someone raises his hand to ask a
    question)
  • Friendly and non-intrusive Human Computer
    Interfaces (HCI)
  • Gait analysis
  • Biometrics
  • Motion disorders detection and diagnosis

8
UPC Model based analysis
  • Aim Extract the posture of a human body based on
    a hierarchical representation of its skeleton.

9
Example (I) Simple Model
10
Example (II) Not so simple model
  • Related publications
  • C.Canton-Ferrer, J.R.Casas, M.Pardàs, Towards a
    Bayesian Approach to Robust Finding
    Correspondences in Multiple View Geometry
    Environments, CGGM, Atlanta (USA). LNCS
    3515281-289, Springer-Verlag, 2005.
  • C.Canton-Ferrer, J.R.Casas, M.Pardàs, Projective
    Kalman Filter Multiocular Tracking of 3D
    Locations Towards Scene Understanding, MLMI,
    Edinburgh (UK). To appear in LNCS, 2005.

11
Example (III) Skeleton model
  • From the voxels data-set, extract information
    about the structure and the position of the
    joints of our skeleton model.

12
UPC
  • Possible collaboration
  • Introduce classification of the detected objects
    in the smart-room context
  • Introduce new techniques of gesture or activity
    recognition in the smart room context
  • Support other groups in the extension from single
    camera to multi camera
  • Introduce body models in other groups
    applications
  • New applications/analysis methods over our data
    (availability to generate multi-camera data)

13
University of Amsterdam
  • Reconstruction of trajectories of people in
    street surveillance videos
  • People detection state-of-the-art from
    literature
  • Tracking algorithm our own work with solid
    software implementation
  • People matching our own work in general object
    matching with color invariant descriptors
    (software is still under development)

14
Sztaki (Szriyanzi)
  • Aim Extraction of simple biometric motion of
    walking and human actions from videos
  • Method
  • The method works with spatio-temporal input
    information to detect and classify typical
    patterns of human movement.
  • Real-time operations
  • New information-extraction and temporal-tracking
    method based on a simplified version of the
    symmetry pattern extraction, which pattern is
    characteristic for the moving legs of a walking
    person. This pattern also helps in recognizing
    human events of more people and unusual actions.

15
Symmetry patterns of walking humans
16
Feature extraction Identification of the
leading leg
Leading leg the staning leg from 2 steps,
Ratio of integrated leg-areas
d
17
Sztaki (Chetverikov)
  • Robust Structure-from-Motion, 3D motion
    segmentation and grouping
  • Given a set of feature points tracked over the
    frames, we can do robust SfM in presence of more
    than 50 outliers.
  • Based on that, we can do robust 3D motion
    segmentation of multiple objects in presence of
    occlusion, outliers, and for moving camera.
  • Recently, we have also developed a novel method
    for grouping the segmented parts, in order to
    decide which of them are related. For example,
    one can determine if an object rotates around an
    axis defined by another object.

18
Bilkent
  • Human body extraction, tracking and activity
    recognition from video sequences.
  • Body detection and extraction based on motion
    detection and object shape based classification
    techniques, background learning and silhouette
    shape-based object classification.
  • Multi-person and single person tracking
    Correspondence-based whole body tracking and
    model-based body part tracking methods.
  • Human action recognition Tracking results will
    be combined with activity models (action
    templates), Hidden Markov models and dynamic
    programming techniques.

19
ACV
  • Fast Spatio-Temporal tracking based on Principal
    Curves

20
ACV
  • Back-projected reconstructed trajectories

21
ACV
  • Possible cooperation
  • Applying our tracking methods to your data
  • Benchmarking, evaluation of motion detection,
    tracking performance
  • Algorithms for fast computation of informative
    descriptors (for recognition and tracking tasks)

22
ICG
  • People detection based on an On-line Adaboost
    method, which is embedded in a learning framework
    that can train a Person detector without hand
    labelling.
  • Appearance based tracking of people based on an
    on-line classifier.
  • Both methods are based on integral orientation
    histogram features and are able to run in
    real-time on a standard PC

23
ICG
  • Possible contributions
  • Various sequences we use for testing our methods
    (some of them with ground truth).
  • Combining our methods with other techniques to
    improve the robustness and applicability.

24
Technion
  • Detection of moving objects
  • Tracking of detected targets
  • Classification to one of predefined classes
  • human,
  • human group,
  • animal,
  • Vehicle

E.Rivlin, M.Rudzsky, R.Goldenberg, U.Bogolmolov
and S.Lapchev.,ICPR'02 Y.Bogomolov, G.Dror,
S.Lapchev, E.Rivlin, M.Rudzsky. BMVC03
25
The classes handled by the system
26
Technion
  • Classification of moving objects
  • Single human (walking, running, crawling)

Tracking
27
Technion
  • Possible collaboration in research of human body
    detection, tracking and motion analysis in
    multi-camera environments

28
University of Surrey
  • Automated Audio-Visual Analysis
  • Work on recognition of activities in the context
    of sports videos and visual surveillance. We are
    concentrating on 2-D analysis, using shape and
    motion cues.
  • Also work on 3-D representations for human
    activity recognition.
  • We have available a public domain (LGPL) C
    library that includes a good framework for
    integrating different types of video sources
    outputs

29
Example
30
FORTH
  • FORTH has developed a hand detector and tracker
    which
  • Handles multiple, potentially occluding blobs
  • Supports detection of the fingers of hands
  • Provides 3D information for the contours of the
    tracked blobs
  • Operates with potentially moving cameras
  • Robust performance under considerable
    illumination changes
  • Real time performance (gt30fps)
  • Has already been employed in many applications
    (cognitive interpretation of human activities, a
    prototype human-computer interaction system,
    landmark detection in robot navigation
    experiments, etc)

31
FORTH - Example
32
FORTH
  • On-going and future research activities
  • Investigation of the use of additional cues
    (motion, shape, etc) for model-based human motion
    detection and tracking
  • Development of inference mechanisms to handle
    missing parts and uncertain detection estimates
  • Research in gesture recognition and human
    activity interpretation

33
E-team possible cooperation
  • Main outcome of e-teams joint research papers!
  • Ideas
  • Extend methods developped for single camera to
    multiple-camera applications
  • Exchange databases / applications
  • Extend systems using tools from other groups
  • Create sub-groups for
  • Body detection
  • Body tracking
  • Object classification
  • Gesture analysis

34
E-team possible cooperation
  • How?
  • Software exchanges (executables, code, )
  • Students visits
  • Two weeks, financed by MUSCLE
  • A few months, with student grants
  • Create a list who wants to host or send someone
    in a very specific subject
  • For every sub-group publish on the Muscle web the
    on-going collaborations (title, partners,
    results)

35
Face detection and recognitionE-TEAM
  • Participants (3)
  • ICG, AUTH, UPC
  • E-Team Leader Not decided yet (M.Pardàs, C.
    Cantón) (UPC)
  • Note If this E-TEAM is too small it could be
    embedded into the Body E-TEAM

36
ICG
  • Researchers Horst Bischoff
  • Face detection, tracking and recognition based on
    local orientation histograms
  • On-line Adaboost algorithm as an algorithm to
    cope with all this tasks
  • Real time operation

37
AUTH
  • Researchers Ionnis Pitas, Nikos Nikolaidis
  • Expertise in face detection, tracking and
    verification based on several detection
    techniques developed for greyscale and color
    images.
  • Techniques based on morphological elastic graph
    matching.

38
UPC
  • Researchers Ferran Marqués, Verónica Vilaplana

39
Perceptual Model
Perceptual Model
Basic Descriptors Basic Descriptor 1 Basic
Descriptor 2 Basic Descriptor M
Shape Descriptor
Specific Descriptors Specific Descriptor
1 Specific Descriptor 2 Specific
Descriptor N
BPT Region
40
Frontal Face Perceptual Model
  • Candidate selection (in maroon)
  • Non-complete representation of the object.
  • Shape descriptor (in orange)
  • Union of regions that may not be linked in the
    BPT.
Write a Comment
User Comments (0)
About PowerShow.com