| dc.description.abstract | We present a statistical image-based shape +  structure model for Bayesian visual hull reconstruction  and 3D structure inference. The 3D shape of a class of  objects is represented by sets of contours from  silhouette views simultaneously observed from multiple  calibrated cameras. Bayesian reconstructions of new  shapes are then estimated using a prior density constructed with a mixture model and probabilistic  principal components analysis. We show how the use  of a class-specific prior in a visual hull reconstruction  can reduce the effect of segmentation errors from the  silhouette extraction process. The proposed method is  applied to a data set of pedestrian images, and  improvements in the approximate 3D models under  various noise conditions are shown. We further  augment the shape model to incorporate structural  features of interest; unknown structural parameters for a  novel set of contours are then inferred via the Bayesian  reconstruction process. Model matching and parameter  inference are done entirely in the image domain and  require no explicit 3D construction. Our shape model  enables accurate estimation of structure despite  segmentation errors or missing views in the input  silhouettes, and works even with only a single input  view. Using a data set of thousands of pedestrian  images generated from a synthetic model, we can  accurately infer the 3D locations of 19 joints on the  body based on observed silhouette contours from real images. | en_US |