MoSh: motion and shape capture from sparse markers

Marker-based motion capture (mocap) is widely criticized as producing lifeless animations. We argue that important information about body surface motion is present in standard marker sets but is lost in extracting a skeleton. We demonstrate a new approach called MoSh (Motion and Shape capture), that automatically extracts this detail from mocap data. MoSh estimates body shape and pose together using sparse marker data by exploiting a parametric model of the human body. In contrast to previous work, MoSh solves for the marker locations relative to the body and estimates accurate body shape directly from the markers without the use of 3D scans; this effectively turns a mocap system into an approximate body scanner. MoSh is able to capture soft tissue motions directly from markers by allowing body shape to vary over time. We evaluate the effect of different marker sets on pose and shape accuracy and propose a new sparse marker set for capturing soft-tissue motion. We illustrate MoSh by recovering body shape, pose, and soft-tissue motion from archival mocap data and using this to produce animations with subtlety and realism. We also show soft-tissue motion retargeting to new characters and show how to magnify the 3D deformations of soft tissue to create animations with appealing exaggerations.

[1]  Andreas Griewank,et al.  Evaluating derivatives - principles and techniques of algorithmic differentiation, Second Edition , 2000, Frontiers in applied mathematics.

[2]  D K Smith,et al.  Numerical Optimization , 2001, J. Oper. Res. Soc..

[3]  Kathleen M. Robinette,et al.  Civilian American and European Surface Anthropometry Resource (CAESAR), Final Report. Volume 1. Summary , 2002 .

[4]  Zoran Popovic,et al.  The space of human body shapes: reconstruction and parameterization from range scans , 2003, ACM Trans. Graph..

[5]  John Hart,et al.  ACM Transactions on Graphics , 2004, SIGGRAPH 2004.

[6]  A. Cappozzo,et al.  Human movement analysis using stereophotogrammetry. Part 3. Soft tissue artifact assessment and compensation. , 2005, Gait & posture.

[7]  Dragomir Anguelov,et al.  SCAPE: shape completion and animation of people , 2005, ACM Trans. Graph..

[8]  Ning Xu,et al.  Videoshop: A new framework for spatio-temporal video editing in gradient domain , 2005, Graph. Model..

[9]  Sang Il Park,et al.  Capturing and animating skin deformation in human motion , 2006, ACM Trans. Graph..

[10]  In-Kwon Lee,et al.  Rubber-like Exaggeration for Character Animation , 2007, 15th Pacific Conference on Computer Graphics and Applications (PG'07).

[11]  Adrian Hilton,et al.  Surface Capture for Performance-Based Animation , 2007, IEEE Computer Graphics and Applications.

[12]  Hans-Peter Seidel,et al.  Marker-less Deformable Mesh Tracking for Human Shape and Motion Capture , 2007, 2007 IEEE Conference on Computer Vision and Pattern Recognition.

[13]  A Simple Framework for Natural Animation of Digitized Models , 2007, XX Brazilian Symposium on Computer Graphics and Image Processing (SIBGRAPI 2007).

[14]  Hans-Peter Seidel,et al.  Performance capture from sparse multi-view video , 2008, ACM Trans. Graph..

[15]  Jessica K. Hodgins,et al.  Data-driven modeling of skin and muscle deformation , 2008, ACM Trans. Graph..

[16]  Tianjia Shao,et al.  Sampling-based contact-rich motion control , 2010, SIGGRAPH 2010.

[17]  Jessica K. Hodgins,et al.  A Data‐driven Segmentation for the Shoulder Complex , 2010, Comput. Graph. Forum.

[18]  Hans-Peter Seidel,et al.  MovieReshape: tracking and reshaping of humans in videos , 2010, ACM Trans. Graph..

[19]  Frédo Durand,et al.  Eulerian video magnification for revealing subtle changes in the world , 2012, ACM Trans. Graph..

[20]  Michael J. Black,et al.  Coregistration: Simultaneous Alignment and Modeling of Articulated 3D Shape , 2012, ECCV.

[21]  David J. Fleet,et al.  Human attributes from 3D pose tracking , 2010, Comput. Vis. Image Underst..

[22]  Jehee Lee,et al.  Tiling Motion Patches , 2013, IEEE Trans. Vis. Comput. Graph..

[23]  Marcus A. Magnor,et al.  Sparse localized deformation components , 2013, ACM Trans. Graph..

[24]  Marcus A. Magnor,et al.  Capture and Statistical Modeling of Arm‐Muscle Deformations , 2013, Comput. Graph. Forum.

[25]  Frédo Durand,et al.  Phase-based video motion processing , 2013, ACM Trans. Graph..

[26]  Hans-Peter Seidel,et al.  Markerless Motion Capture of Multiple Characters Using Multiview Image Segmentation , 2013, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[27]  Michael J. Black,et al.  FAUST: Dataset and Evaluation for 3D Mesh Registration , 2014, 2014 IEEE Conference on Computer Vision and Pattern Recognition.