Title of article :
Shape-From-Silhouette Across Time Part I: Theory and Algorithms
Author/Authors :
KONG-MAN (GERMAN) CHEUNG، نويسنده , , SIMON BAKER AND TAKEO KANADE، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
Shape-From-Silhouette (SFS) is a shape reconstruction method which constructs a 3D shape estimate
of an object using silhouette images of the object. The output of a SFS algorithm is known as the Visual Hull (VH).
Traditionally SFS is either performed on static objects, or separately at each time instant in the case of videos of
moving objects. In this paper we develop a theory of performing SFS across time: estimating the shape of a dynamic
object (with unknown motion) by combining all of the silhouette images of the object over time.We first introduce
a one dimensional element called a Bounding Edge to represent the Visual Hull. We then show that aligning two
Visual Hulls using just their silhouettes is in general ambiguous and derive the geometric constraints (in terms of
Bounding Edges) that govern the alignment. To break the alignment ambiguity, we combine stereo information with
silhouette information and derive a Temporal SFS algorithm which consists of two steps: (1) estimate the motion
of the objects over time (Visual Hull Alignment) and (2) combine the silhouette information using the estimated
motion (Visual Hull Refinement). The algorithm is first developed for rigid objects and then extended to articulated
objects. In the Part II of this paper we apply our temporal SFS algorithm to two human-related applications: (1) the
acquisition of detailed human kinematic models and (2) marker-less motion tracking.
Keywords :
3D RECONSTRUCTION , Shape-From-Silhouette , Visual hull , across time , stereo , temporal alignment , Visibility , alignment ambiguity
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION