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<b:Sources SelectedStyle="" xmlns:b="http://schemas.openxmlformats.org/officeDocument/2006/bibliography"  xmlns="http://schemas.openxmlformats.org/officeDocument/2006/bibliography" >
<b:Source>
<b:Tag>Xavier Perez Sala2017</b:Tag>
<b:SourceType>ArticleInAPeriodical</b:SourceType>
<b:Year>2017</b:Year>
<b:PeriodicalName>International Journal of Computer Vision</b:PeriodicalName>
<b:Volume>121</b:Volume>
<b:Issue>3</b:Issue>
<b:Pages>327&#8211;343</b:Pages>
<b:Author>
<b:Author><b:NameList>
<b:Person><b:Last>Xavier Perez Sala</b:Last></b:Person>
<b:Person><b:Last>Fernando De la Torre</b:Last></b:Person>
<b:Person><b:Last>Laura Igual</b:Last></b:Person>
<b:Person><b:Last>Sergio Escalera</b:Last></b:Person>
<b:Person><b:Last>Cecilio Angulo</b:Last></b:Person>
</b:NameList></b:Author>
</b:Author>
<b:Title>Subspace Procrustes Analysis</b:Title>
 <b:ShortTitle>IJCV</b:ShortTitle>
<b:Comments>Procrustes Analysis (PA) has been a popular technique to align and build 2-D statistical models of shapes. Given a set of 2-D shapes PA is applied to remove rigid transformations. Then, a non-rigid 2-D model is computed by modeling (e.g., PCA) the residual. Although PA has been widely used, it has several limitations for modeling 2-D shapes: occluded landmarks and missing data can result in local minima solutions, and there is no guarantee that the 2-D shapes provide a uniform sampling of the 3-D space of rotations for the object. To address previous issues, this paper proposes Subspace PA (SPA). Given severalinstances of a 3-D object, SPA computes the mean and a 2-D subspace that can simultaneously model all rigid and non-rigid deformations of the 3-D object. We propose a discrete (DSPA) and continuous (CSPA) formulation for SPA, assuming that 3-D samples of an object are provided. DSPA extends the traditional PA, and produces unbiased 2-D models by uniformly sampling different views of the 3-D object. CSPA provides a continuous approach to uniformly sample the space of 3-D rotations, being more efficient in space and time. Experiments using SPA to learn 2-D models of bodies from motion capture data illustrate the benefits of our approach.</b:Comments>
</b:Source>
</b:Sources>