Generating a Colored 3D Model of Face from a Single Image
نویسنده
چکیده
In this report, we present a method to generate 3D shape and color information of a face from a single image. This is done in two steps, firstly we learn a morphable model of 3D face from some exemplar faces. Using this 3D model we could generate various novel faces by changing the model parameters. In the second step we formulate a method to fit this model to a single image to find out the model parameters describing that individual. In this step we also estimated approximately various rendering parameters such as camera rotation, translation and focal length; ambient and directed light intensities as well as direction of light.
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