Statistical shape analysis techniques commonly employed in the medical imaging community, such as active shape models or active appearance models, rely on principal component analysis (PCA) to decompose shape variability into a reduced set of interpretable components. In this paper we propose principal factor analysis (PFA) as an alternative and complementary tool to PCA providing a decomposition into modes of variation that can be more easily interpretable, while still being a linear efficient technique that performs dimensionality reduction (as opposed to independent component analysis, ICA). The key difference between PFA and PCA is that PFA models covariance between variables, rather than the total variance in the data. The added value ...
We describe a method for analyzing the shape variability of images, called geometric PCA. Our approa...
In this paper we address the problem of registering 3D scattered data by the mean of a statistical s...
Mid-level processes on images often return outputs in functional form. In this context the use of fu...
In the past decade, statistical shape modeling has been widely popularized in the medical image anal...
The femur is the longest bone in the human body and serves the important purposes of load-bearing an...
Statistical shape analysis of 3-D scanned human heads provides important information for many applic...
Traditional shape learning of medical image data has been implemented via Principal Component Analys...
Traditional shape learning of medical image data has been implemented via Principal Component Analys...
International audienceThe main objective of this study is to combine the statistical shape analysis ...
Principal components analysis is a powerful technique which can be used to reduce data dimensionalit...
International audienceStatistical shape models have become a widely used tool in computer vision and...
Statistical shape models (SSMs) play an important role in medical image analysis. A sufficiently lar...
Statistical shape models (SSMs) play an important role in medical image analysis. A sufficiently lar...
Statistical shape models (SSMs) play an important role in medical image analysis. A sufficiently lar...
© Springer International Publishing AG 2016. Using image-based descriptors to investigate clinical h...
We describe a method for analyzing the shape variability of images, called geometric PCA. Our approa...
In this paper we address the problem of registering 3D scattered data by the mean of a statistical s...
Mid-level processes on images often return outputs in functional form. In this context the use of fu...
In the past decade, statistical shape modeling has been widely popularized in the medical image anal...
The femur is the longest bone in the human body and serves the important purposes of load-bearing an...
Statistical shape analysis of 3-D scanned human heads provides important information for many applic...
Traditional shape learning of medical image data has been implemented via Principal Component Analys...
Traditional shape learning of medical image data has been implemented via Principal Component Analys...
International audienceThe main objective of this study is to combine the statistical shape analysis ...
Principal components analysis is a powerful technique which can be used to reduce data dimensionalit...
International audienceStatistical shape models have become a widely used tool in computer vision and...
Statistical shape models (SSMs) play an important role in medical image analysis. A sufficiently lar...
Statistical shape models (SSMs) play an important role in medical image analysis. A sufficiently lar...
Statistical shape models (SSMs) play an important role in medical image analysis. A sufficiently lar...
© Springer International Publishing AG 2016. Using image-based descriptors to investigate clinical h...
We describe a method for analyzing the shape variability of images, called geometric PCA. Our approa...
In this paper we address the problem of registering 3D scattered data by the mean of a statistical s...
Mid-level processes on images often return outputs in functional form. In this context the use of fu...