Now that Halloween is over,
it is the first day of Christmas
papa elf where you at

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Not today Justin

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we're not kids anymore.
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@eskapeh
Now that Halloween is over,
it is the first day of Christmas
papa elf where you at
my body is ready
bub
the island
It’s equally awkward to stand in silence while everyone sings you Happy Birthday or to join in and sing along.
3D Face Reconstruction from a Single Image
Machine Learning research from University of Nottingham School of Computer Science can generate a 3D model of a human face from an image using neural networks:
3D face reconstruction is a fundamental Computer Vision problem of extraordinary difficulty. Current systems often assume the availability of multiple facial images (sometimes from the same subject) as input, and must address a number of methodological challenges such as establishing dense correspondences across large facial poses, expressions, and non-uniform illumination. In general these methods require complex and inefficient pipelines for model building and fitting. In this work, we propose to address many of these limitations by training a Convolutional Neural Network (CNN) on an appropriate dataset consisting of 2D images and 3D facial models or scans. Our CNN works with just a single 2D facial image, does not require accurate alignment nor establishes dense correspondence between images, works for arbitrary facial poses and expressions, and can be used to reconstruct the whole 3D facial geometry (including the non-visible parts of the face) bypassing the construction (during training) and fitting (during testing) of a 3D Morphable Model. We achieve this via a simple CNN architecture that performs direct regression of a volumetric representation of the 3D facial geometry from a single 2D image. We also demonstrate how the related task of facial landmark localization can be incorporated into the proposed framework and help improve reconstruction quality, especially for the cases of large poses and facial expressions. Â Â Â Â
There is an online demo which will let you upload an image to convert and even save as a 3D model here
Link
Please