Gaussian Process Morphable Models
نویسندگان
چکیده
Models of shape variations have become a central component for the automated analysis of images. An important class of shape models are point distribution models (PDMs). These models represent a class of shapes as a normal distribution of point variations, whose parameters are estimated from example shapes. Principal component analysis (PCA) is applied to obtain a low-dimensional representation of the shape variation in terms of the leading principal components. In this paper, we propose a generalization of PDMs, which we refer to as Gaussian Process Morphable Models (GPMMs). We model the shape variations with a Gaussian process, which we represent using the leading components of its Karhunen-Loève expansion. To compute the expansion, we make use of an approximation scheme based on the Nyström method. The resulting model can be seen as a continuous analog of a standard PDM. However, while for PDMs the shape variation is restricted to the linear span of the example data, with GPMMs we can define the shape variation using any Gaussian process. For example, we can build shape models that correspond to classical spline models and thus do not require any example data. Furthermore, Gaussian processes make it possible to combine different models. For example, a PDM can be extended with a spline model, to obtain a model that incorporates learned shape characteristics but is flexible enough to explain shapes that cannot be represented by the PDM.
منابع مشابه
Morphable Face Models - An Open Framework
In this paper, we present a novel open-source pipeline for face registration based on Gaussian processes as well as an application to face image analysis. Non-rigid registration of faces is significant for many applications in computer vision, such as the construction of 3D Morphable face models (3DMMs). Gaussian Process Morphable Models (GPMMs) unify a variety of non-rigid deformation models w...
متن کاملA Linear Initialization for Automatic Fitting of 3D Morphable Models
Morphable Models are dense 3D models built using PCA of aligned laser scanned data which is then fitted to images. During fitting, variations in illumination, pose and identity can be addressed by the rendering process; Morphable Models are therefore extremely useful for object modeling. One problem however is that Morphable Model fitting is slow since gradient descent methods are generally use...
متن کاملApplications of 3D morphable models for faces with expressions
In this paper, we present a framework to represent the face of any individual, dealing with identity and expression variation and some applications of this model. A 3D morphable model (3DMM) is a generative method capable to reconstruct the 3D shape of human faces from a small set of coefficients. It is used in many applications such as identity or expression recognition, 3D scans processing or...
متن کاملA Multiresolution 3D Morphable Face Model and Fitting Framework
3D Morphable Face Models are a powerful tool in computer vision. They consist of a PCA model of face shape and colour information and allow to reconstruct a 3D face from a single 2D image. 3D Morphable Face Models are used for 3D head pose estimation, face analysis, face recognition, and, more recently, facial landmark detection and tracking. However, they are not as widely used as 2D methods t...
متن کاملQuantification and classification of locomotion patterns by spatio-temporal morphable models
Morphable models have been applied successfully in the context of computer vision and computer graphics for the representation of classes of stationary images. In this paper, we develop a similar technique for the representation of classes of complex movements that we call space-time morphable models. This technique permits to approximate new complex movement patterns by linear combinations of ...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- IEEE transactions on pattern analysis and machine intelligence
دوره شماره
صفحات -
تاریخ انتشار 2017