Title :
Principal component analysis with missing data and its application to polyhedral object modeling
Author :
Shum, Heung-Yeung ; Ikeuchi, Katsushi ; Reddy, Raj
Author_Institution :
Robotics Inst., Carnegie Mellon Univ., Pittsburgh, PA, USA
fDate :
9/1/1995 12:00:00 AM
Abstract :
Observation-based object modeling often requires integration of shape descriptions from different views. To overcome the problems of errors and their accumulation, we have developed a weighted least-squares (WLS) approach which simultaneously recovers object shape and transformation among different views without recovering interframe motion. We show that object modeling from a range image sequence is a problem of principal component analysis with missing data (PCAMD), which can be generalized as a WLS minimization problem. An efficient algorithm is devised. After we have segmented planar surface regions in each view and tracked them over the image sequence, we construct a normal measurement matrix of surface normals, and a distance measurement matrix of normal distances to the origin for all visible regions over the whole sequence of views, respectively. These two matrices, which have many missing elements due to noise, occlusion, and mismatching, enable us to formulate multiple view merging as a combination of two WLS problems. A two-step algorithm is presented. After surface equations are extracted, spatial connectivity among the surfaces is established to enable the polyhedral object model to be constructed. Experiments using synthetic data and real range images show that our approach is robust against noise and mismatching and generates accurate polyhedral object models
Keywords :
image recognition; image reconstruction; least squares approximations; minimisation; PCA; distance measurement matrix; image sequence; mismatching; missing data; multiple view merging; noise; normal distances; normal measurement matrix; observation-based object modeling; occlusion; polyhedral object model; polyhedral object modeling; principal component analysis; real range images; segmented planar surface regions; shape descriptions; shape recovery; spatial connectivity; surface normals; synthetic data; transformation recovery; two-step algorithm; weighted least-squares approach; Data mining; Distance measurement; Equations; Image segmentation; Image sequences; Merging; Noise robustness; Principal component analysis; Shape; Transmission line matrix methods;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on