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Michael J. Black
Position: Director
Room no.: MRZ 1.B.01
Phone: +49 7071 601 1801
Fax: +49 7071 601 1802

Curriculum Vitae

[pdf]

Citations

Google Scholar citations

Biography

Michael J. Black received his B.Sc. from the University of British Columbia (1985), his M.S. from Stanford (1989), and his Ph.D. in computer science from Yale University (1992). After research at NASA Ames and post-doctoral research at the University of Toronto, he joined the Xerox Palo Alto Research Center in 1993 where he later managed the Image Understanding Area and founded the Digital Video Analysis group. From 2000 to 2010 he was on the faculty of Brown University in the Department of Computer Science (Assoc. Prof. 2000-2004, Prof. 2004-2010). He is a founding director at the Max Planck Institute for Intelligent Systems in Tübingen, Germany, where he leads the Perceiving Systems department. He is an honorary professor at the University of Tübingen, a visiting professor at ETH Zürich, and an adjunct professor (research) at Brown University.

Black is a foreign member of the Royal Swedish Academy of Sciences. He is a recipient of the 2010 Koenderink Prize for Fundamental Contributions in Computer Vision and the 2013 Helmholtz Prize for work that has stood the test of time. His work has won several paper awards including the IEEE Computer Society Outstanding Paper Award (CVPR'91). His work received Honorable Mention for the Marr Prize in 1999 and 2005. His early work on optical flow has been widely used in Hollywood films including for the Academy-Award-winning effects in “What Dreams May Come” and “The Matrix Reloaded.” He is a co-founder and member of the board of directors of Body Labs Inc., which is commercializing his team’s research on 3D human body shape.

Prof. Black's research interests in machine vision include optical flow estimation, 3D shape models, human shape and motion analysis, robust statistical methods, and probabilistic models of the visual world. In computational neuroscience his work focuses on probabilistic models of the neural code and applications of neural decoding in neural prosthetics.

Short version

Michael Black received his B.Sc. from the University of British Columbia (1985), his M.S. from Stanford (1989), and his Ph.D. from Yale University (1992). After post-doctoral research at the University of Toronto, he worked at Xerox PARC as a member of research staff and an area manager. From 2000 to 2010 he was on the faculty of Brown University in the Department of Computer Science (Assoc. Prof. 2000-2004, Prof. 2004-2010). He is one of the founding directors at the Max Planck Institute for Intelligent Systems in Tübingen, Germany, where he leads the Perceiving Systems department. He is an Honorarprofessor at the University of Tuebingen, Visiting Professor at ETH Zürich, and Adjunct Professor (Research) at Brown University. His work has won several awards including the IEEE Computer Society Outstanding Paper Award (1991), Honorable Mention for the Marr Prize (1999 and 2005), the 2010 Koenderink Prize for Fundamental Contributions in Computer Vision, and the 2013 Helmholtz Prize for work that has stood the test of time. He is a foreign member of the Royal Swedish Academy of Sciences. He is also a co-founder and board member of Body Labs Inc.

Head shot

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Education

Yale University, New Haven, CT
Ph.D., Computer Science, 1992.
Stanford University, Stanford, CA
M.S., Computer Science, 1989.
The University of British Columbia, Vancouver, BC
B.Sc., Honours Computer Science, 1985.

Selected Awards and Honors

Royal Swedish Academy of Sciences
Foreign member, Class for Engineering Sciences, since June 2015.

2013 Helmholtz Prize
for the paper: Black, M. J., and Anandan, P., "A framework for the robust estimation of optical flow,'' IEEE International Conference on Computer Vision, ICCV, pages 231-236, Berlin, Germany. May 1993.

2010 Koenderink Prize for Fundamental Contributions in Computer Vision,
for the paper: Sidenbladh, H., Black, M. J., and Fleet, D. J., "Stochastic tracking of 3D human figures using 2D image motion,'' European Conference on Computer Vision, 2000.
D. Vernon (Ed.), Springer Verlag, LNCS 1843, Dublin, Ireland, pp. 702-718, June 2000.

Best Paper Award, INI-Graphics Net, 2008, First Prize Winner of Category Research,
with S. Roth for the paper  "Steerable random fields."

Commendation and Chief's Award, Henrico County Division of Police,
County of Henrico, Virginia, April 19, 2007.

Best Paper Award, Fourth International Conference on
Articulated Motion and Deformable Objects (AMDO-e 2006),
with L. Sigal for the paper "Predicting 3D people from 2D pictures.''

Marr Prize, Honorable Mention, Int. Conf. on Computer
Vision, ICCV-2005, Beijing, China, Oct. 2005
with S. Roth for the paper "On the spatial statistics of optical flow.''

Marr Prize, Honorable Mention, Int. Conf. on Computer
Vision, ICCV-99, Corfu, Greece, Sept. 1999
with D. J. Fleet for the paper "Probabilistic detection and tracking of motion discontinuities.''

University of Maryland, Invention of the Year, 1995,
"Tracking and Recognizing Facial Expressions,''
with Y. Yacoob.

University of Toronto, Computer Science Students' Union Teaching Award for 1992-1993.

IEEE Computer Society, Outstanding Paper Award,
Conference on Computer Vision and Pattern Recognition,
Maui, Hawaii, June 1991
with P. Anandan for the paper "Robust dynamic motion estimation over time.''

Employment and Positions Held

Max Planck Institute for Intelligent Systems
Tübingen, Germany
Director, 1/11 - present
Managing Director, 2/13 - 6/15
Eberhard Karls Universität Tübingen, Faculty of Science, Department of Computer Science
Tübingen, Germany
Honorarprofessor, 05/22/12 - present
ETH Zürich, Dept. of Information Technology and Electrical Engineering
Zürich, Switzerland
Visting Professor, 04/2014 - present
Stanford University, Electrical Engineering
Stanford, CA
Visiting Professor, 5/11-4/12, 7/12-7/13.
Brown University, Department of Computer Science,
Providence, RI
Adjunct Professor (Research), 1/11-present
Professor, 7/04-12/10
Associate Professor, 7/00-6/04
My research addresses the problem of estimating and explaining motion in image sequences. My early work focused on the use of robust statistics and mixture models for recovering image motion in situations involving occlusion. As motion estimation has improved, I have focused on the recognition of human motion. Current work is focusing on 3D human motion, Bayesian methods, learning temporal models, and particle filtering techniques.
Xerox Palo Alto Research Center, (Now PARC Inc.)
Palo Alto, CA
Area Manager, Image Understanding Area, 1/96-7/00
Member of Research Staff, 9/93-12/95
Research included the development of a theory of ``appearance change'' in image sequences. The approach involves modeling image changes (motion, illumination, specularity, occlusion, etc.) as a ``mixture'' of causes. In this context I am exploring a shift from motion estimation to motion explanation in my work on the modeling and recognition of motion ``features'' (occlusion boundaries, moving bars, etc.), human facial expressions and gestures, and motion ``texture'' (plants, fire, water, etc.). I am particularly interested in the modeling and recognition of multi-media and HCI applications such as video indexing, motion for video annotation, teleconferencing, and gestural user interfaces. Other research includes robust learning of image-based models, regularization with transparency, anisotropic diffusion, and the recovery of multiple shapes from transparent textures.
University of Toronto,
Toronto, Ontario
Assistant Professor, Department of Computer Science, (8/92 - 9/93).
Research included the application of mixture models to optical flow, detection and tracking of surface discontinuities using motion information, and robust surface recovery in dynamic environments.
Yale University, (9/89-8/92)
New Haven, CT
Research Assistant, Department of Computer Science.
Research in the recovery of optical flow, incremental estimation, temporal continuity, applications of robust statistics to optical flow, the relationship between robust statistics and line processes, the early detection of motion discontinuities, and the role of representation in computer vision.
NASA Ames Research Center, (6/90-8/92)
Moffett Field, CA
Visiting Researcher, Aerospace Human Factors Research Division.
Developed motion estimation algorithms in the context of an autonomous Mars landing and nap-of-the-earth helicopter flight and studied the psychophysical implications of a temporal continuity assumption.
Advanced Decision Systems, (12/86-6/89)
Mountain View, CA
Computer Scientist, Image Understanding Group.
Research on spatial reasoning for robotic vehicle route planning and terrain analysis. Vision research including perceptual grouping, object-based translational motion processing, the integration of vision and control for an autonomous vehicle, object modeling using generalized cylinders, and the development of an object-oriented vision environment.
GTE Government Systems, (6/85-12/86)
Mountain View, CA
Engineer, Artificial Intelligence Group.
Developed expert systems for multi-source data fusion and fault location.
Miscellaneous, ('78-'85)
Summer undergraduate researcher at UBC; park ranger's assistant; volunteer firefighter, busboy; and probably my worst job: cleaning dog kennels.

Research Interests

My Computer Vision Research addresses:
  • the statistics of natural scenes and their motion;
  • articulated human motion pose estimation and tracking;
  • the estimation of human body shape from images and video;
  • the representation and detection of motion discontinuities;
  • the estimation of optical flow.
I also do research on neural engineering for brain-machine interfaces and neural prostheses.

Current PhD students:

Jonas Wulff, MPI for Intelligent Systems, Tübingen

Matthew Loper, MPI for Intelligent Systems, Tübingen

Graduated PhD students:

Silvia Zuffi, Berstein post doctoral fellow, Center for Integrative Neuroscience, University of Tubingen
Thesis: Shape Models of the Human Body for Distributed InferenceBrown University, May 2015.

Aggeliki Tsoli, Post doctoral researcher, FORTH Institute, Crete,
Thesis: Modeling the Human body in 3D: Data Registration and Human Shape Representation, Department of Computer Science, Brown University, May 2014

Oren Freifeld, Post doctoral researcher, MIT,
Thesis: Statistics on Manifolds with Applications to Modeling Shape Deformations, Division of Applied Mathematics, Brown University, August 2013

Peng Guan, Google,
Thesis: Virtual Human Bodies with Clothing and Hair: From Images to Animation Department of Computer Science, Brown University, December 2012

Deqing Sun, Post doctoral researcher, Harvard University,
Thesis: From Pixels to Layers: Joint Motion Estimation and Segmentation,  Department of Computer Science, Brown University, July 2012

Alexandru Balan, Microsoft
Thesis: Detailed Human Shape and Pose from Images, Department of Computer Science, Brown University, May 2010

Leonid Sigal, Research Scientist, Disney Research Pittsburgh 
Thesis: Continuous-state graphical models for object localization, pose estimation and tracking Department of Computer Science, Brown University, May 2008

Stefan Roth, Professor, Dept. of Computer Science, TU Darmstadt
Thesis: High-order Markov random fields for low-level vision. Dept. of Computer Science, Brown University,
May 2007 Winner of the Joukowsky Family Foundation Outstanding Dissertation Award

Frank Wood, Associate Professor, Department of Engineering, Oxford
Thesis: Nonparametric Bayesian modeling of neural data. Department of Computer Science, Brown University

Hulya Yalcin, Assistant Professor, Department of Electronics and Communications Engineering, Istanbul Technical University, Turkey
Thesis: Implicit models of moving and static surfaces, Division of Engineering, Brown University, May 2004

Wei Wu, Associate Professor, Dept. of Statistics, Florida State
Thesis: Statistical models of neural coding in motor cortex, Division of Applied Math, Brown University. Co-supervised with David Mumford. May 2004.

Fernando De la Torre, Research Associate Professor, CMU
Thesis: Robust subspace learning for computer vision, La Salle School of Engineering. Universitat Ramon Llull, Barcelona, Spain. Jan. 2002

Hedvig Kjellstrom (nee Sidenbladh), Associate Professor (Lektor) of Comptuer Science, KTH, Sweden
Thesis: Probabilistic Tracking and Reconstruction of 3D Human Motion in Monocular Video Sequences. Dept. of Numerical Analysis and Computer Science, KTH, Stockholm, Sweden 2001

Shanon Ju
Thesis: Estimating image motion in layers: The Skin and Bones model. University of Toronto. Jan. 1999

 

Post doctoral researchers:

Silvia Zuffi, Bernstein post doctoral fellow, Center for Integrative Neuroscience, University of Tubingen, June 2015 - present
 
Laura Sevilla, MPI for Intelligent Systems, Feb. 2015 - present
 
Ali Osman Ulusoy, MPI for Intelligent Systems, Sept. 2014 - present
 
Gerard Pons-Moll, MPI for Intelligent Systems, Sept. 2013 - present
 
Si Yong Yeo, MPI for Intelligent Systems, July 2013 - present
 
Ijaz Akhter, MPI for Intelligent Systems, July 2013 - present
 
Naejin Kong, MPI for Intelligent Systems, Jan. 2013 - present, jointly with P. Gehler
 

Former post doctoral Researchers:

Cristina Garcia Cifuentes MPI for Intelligent Systems, Autonomous Motion Department.

Chaohui Wang, Assistant Professor, Laboratoire d'Informatique Gaspard Monge, Université Paris-Est, Paris, France.

Søren Hauberg, Post doctoral researcher Danish Technical University (DTU), Copenhagen.
 
Hueihan Jhuang, industry, Taiwan.
 
Javier Romero,  Research Scientist, MPI for Intelligent Systems, Perceiving Systems Department.

Gregrory Shakhnarovich, Assistant Professor, Toyota Technological Institute at Chicago. 

Sung-Phil Kim, Assistant Professor, Department of Brain and Cognitive Engineering, Korea University.

Ronan Fablet, Professor, Telecom Bretange.

 

Datasets and evalautions

I belive that computer vision is advanced by careful evaluation and comparison.  Consequently I have been involved in building several public datasets and evaluation websites.

FAUST human scan dataset and registration benchmark

3D human scans of multiple people in multiple poses with accurate ground truth correspondences: FAUST site.

MPI-Sintel optical flow dataset and evaluation

Optical flow benchmark based on the animate film Sintel: MPI-Sintel site.

JHMDB: Joint-annotated Human Motion Database

Annotated videos for action recognition: JHMDB site.

Middlebury Optical Flow Benchmark

Image sequences, ground truth flow, and evaluation are all available on the Middlebury Flow site.

HumanEva

Multi-camera imagery with ground truth 3D human pose: HumanEva site.

Lee Walking Sequence

Multi-camera imagery with ground truth 3D human pose.  This predates HumanEva and the imagery is grayscale only.   There is also software for partical filter tracking on the site.

http://cs.brown.edu/~ls/Software/index.html

Archival Image Sequences

My old Brown site has several image sequences used in my older publications.  These include some classic sequences such as Yosemite, the Pepsi can, the SRI tree sequence, and the Flower Garden sequence.

Data

Optical Flow Code (C and Matlab):

1. The most recent and most accurate optical flow code in Matlab

Download

This code is descrbed in

A Quantitative Analysis of Current Practices in Optical Flow Estimation and the Principles behind Them
Sun, D., Roth, S., and Black, M.J.
International Journal of Computer Vision (IJCV), 106(2):115-137, 2014.
(pdf)

Secrets of optical flow estimation and their principles
Sun, D., Roth, S., and Black, M. J.,
IEEE Conf. on Computer Vision and Pattern Recog., CVPR, June 2010.
(pdf)

This method implements many of the currently best known techniques for accurate optical flow and was once ranked #1 on the Middlebury evaluation (June 2010).

The software is made available for research pupropses. Please read the copyright statement and contact me for commerical licensing.

2. Matlab implmentation of the Black and Anandan dense optical flow method

The Matlab flow code is easier to use and more accurate than the original C code. The objective function being optimized is the same but the Matlab version uses more modern optimization methods:

Matlab implementation of Black and Anandan robust dense optical flow algorithm

The method in 1 above is more accurate and also implements Black and Anandan plus much more.

3. Original Black and Anandan method implemented in C

The optical flow software here has been used by a number of graphics companies to make special effects for movies.  This software is provided for research purposes only; any sale or use for commercial purposes is strictly prohibited. 

Contact me for the password to download the software, stating that it is for research purposes.

Please contact me if you wish to use this code for commercial purpose.

If you are a commercial enterprise and would like assistance in using optical flow in your application, please contact me at my consulting address black@opticalflow.com.

This is EXPERIMENTAL software. It is provided to illustrate some ideas in the robust estimation of optical flow. Use at your own risk. No warranty is implied by this distribution.

Copyright notice.

There are two versions available. First, the original C code implementing the robust flow methods described in Black and Anandan '96:

Area-based optical flow: robust affine regression. 
Dense optical flow: robust regularization.

Reference:

The robust estimation of multiple motions: Parametric and piecewise-smooth flow fields,
Black, M. J. and Anandan, P.,
Computer Vision and Image Understanding, CVIU, 63(1), pp. 75-104, Jan. 1996.
(pdf), (pdf from publisher)

 

Robust Principal Component Analysis (PCA)

Software is from the ICCV'2001 paper with Fernando De la Torre.

De la Torre, F. and Black, M. J., Robust principal component analysis for computer vision, to appear: Int. Conf. on Computer Vision, ICCV-2001, Vancouver, BC. (postscript, 1.0MB)(pdf, 0.36MB), (abstract)

Software, demos, and data.

 

Human motion tracking

The code below provides a simple Matlab implementation of the Bayesian 3D person tracking system described in ECCV'00 and ICCV'01. It is too slow to be used to track the entire body but can be used to track various limbs and provides a basis for people who want to understand the methods better and extend them.

Learning image statistics for Bayesian tracking,
Sidenbladh, H. and Black, M. J.,
Int. Conf. on Computer Vision, ICCV-2001, Vancouver, BC, Vol. II, pp. 709-716.
(postscript, 2.8MB)(pdf, 0.38MB), (abstract)

Stochastic tracking of 3D human figures using 2D image motion,
Sidenbladh, H., Black, M. J., and Fleet, D.J.,
European Conference on Computer Vision, D. Vernon (Ed.), Springer Verlag, LNCS 1843, Dublin, Ireland, pp. 702-718 June 2000.
(postscript)(pdf), (abstract)

Software. (Note: if you uncompress and untar this on a PC using Winzip, the path names may be lost which will cause Matlab to fail when you load the .mat files.  Instead uncompress/untar using gunzip and tar.)


 

 

Werner Reichardt Center for Integrative Neuroscience, Eberhard Karls Universität Tübingen, Member since 2011.
 

Brown Institute for Brain Science (BIBS), Member

 

How to reach me:

  • email: black@tue.mpg.de
  • Skype: michael_j_black
  • Phone: +49 7071 601-1801
  • FAX: +49 7071 601-1802

Mailing address

Michael J. Black
Max Planck Institute for Intelligent Systems
Spemannstrasse 41
72076 Tübingen
Germany

For more information including our address and directions, see the department CONTACT page.

I receive more email than I can read, let alone respond to. I apologize if you do not get a response. If you do not hear from me, consider the following:

  • If you need something that is time sensitive (letter of reference, paper review, etc.), please contact or cc my assistant, Melanie Feldhofer  (melanie.feldhofer@is.mpg.de)
  • If you have asked me to do something (like review a paper or grant proposal), and I haven't responded saying that I can do it, then I have not agreed to do it. 
  • If you are seeking a job or want to be a PhD student, visit the CAREER page
  • Applications for jobs or graduate school should be sent to ps-apply@tuebingen.mpg.de

My assistant reads mail sent to me at black@is.mpg.de.  If you have something particularly private, you can email me at black@cs.brown.edu and only I will read it.

 

Schools/Lectures

Optical flow: The "good parts" version,
Machine Learning Summer School (MLSS), Tübiungen, 2013.
 

Keynotes

Optical flow: The "good parts" version,
Machine Learning Summer School (MLSS), Tübiungen, 2013.
 
Modernizing Muybridge: From 3D models of the body to decoding the brain,
Keynote, Svenska Sällskapet för Automatiserad Bildanalys (Swedish Society for Automated Image Analysis, SSBA), KTH, Stockholm, March 2012.
 
On modeling bodies and brains: From 3D models to decoding the brain,
Keynote, Vision, Modeling and Visualization Workshop, October 4-6, 2011, Berlin.
 
Human activity understanding: Observing the body and the brain
Keynote, International Workshop on Human Activity Understanding from 3D Data, Colorado Spring, June 24, 2011.
 

Invited Conference and Workshop Talks

MPI-Sintel: From animation to evaluation of optical flow,
ECCV 2012 Workshop on Unsolved Problems in Optical Flow and Stereo Estimation, Oct. 12, Florence Italy.
 
Modernizing Muybridge: From 3D models of the human body to decoding the brain,
Sensory Coding & Natural Environment, IST Austrial, Sept. 2012.
 
A naturalistic film for optical flow evaluation,
At the intersection of Vision, Graphics, Learning and Sensing - Representations and Applications Workshop, Cambridge, May 2012.
 
Thinking about movement: Decoding the brain to restore lost function,
Inaugural Symposium: New Perspectives in Integrative Neuroscience, Hertie Institute, Tübingen, May 2012.
 
On modeling and estimating human body shape,
Rank Prize Symposium on Machine Learning and Computer Vision
Grasmere, UK, March 26-29, 2012.
 
Modernizing Muybridge: From 3D models of the body to decoding the brain,
Bernstein Cluster C Symposium, Bayesian Inference: From Spikes to Behaviour, Tübingen,  December 9-10, 2011.
 
From Muybridge to a brain-computer interface: A computational investigation of animal movement,
Technion Computer Engineering (TCE) Inaugural Conference, Haifa, Israel, June 1-5, 2011.
 

Invited Talks: Colloquia and Seminars

The Mathematics of Body Shape,
CIN-MPI Body Perception seminar, Tübingen, July 2012.
 
Modernizing Muybridge: From 3D models of the body to decoding the brain,
Gatsby Computational Neuroscience Unit, Univ. College, London, Jan. 2012.
 
Modernizing Muybridge: From 3D models of the body to decoding the brain,
Oxford University,  Robotics Research Group Seminar, Jan. 2012.
 
Modeling bodies and brains: From computer vision to neural prostheses,
Wilhelm Schickhard Institute for Computer Sciences, Eberhard Karls University, Tübingen, Germany, July 2011.
 

Other Talks

From Scans to Avatars. Using  Multi-Viewpoint, High Precision 3D Surface Imaging to create Realistic Deformable Models of the Body,
Jointly with Chris Lane, CEO 3dMD LLC.
3rd International Conference and Exhibition on 3D Body Scanning Technologies, Lugano, Switzerland, 16-17 October 2012.
 
Computing Optical Flow,
Computational Vision Summer School 2012, Freudenstadt-Lauterbad (Black Forest), June-July 2012
 
Seeing machines,
Paul-Peter Ewald Kolloquium, MPI for Ingelligent Systems,
Stuttgart, July 1, 2011.
 

 

1990
Thumb_bildschirmfoto_2013-01-14_um_12.09.14
A model for the detection of motion over time
Black, M.J. and Anandan, P.
In Proc. Int. Conf. on Computer Vision, ICCV-90, pages 33-37, Osaka, Japan. December 1990.
Abstract: