A new technique is described for synthesizing images of faces from new viewpoints, when only a single 2D image is available. A novel 2D image of a face can be computed without knowledge about the 3D structure of the head. The technique draws on prior knowledge of faces based on example images of other faces seen in different poses and on a single generic 3D model of a human head. The example images are used to learn a pose-invariant shape and texture description of a new face. The 3D model is used to solve the correspondence problem between images showing faces in different poses. Examples of synthetic "rotations" over 24 degree based on a training set of 100 faces are shown
If we are provided a face database with only one example view per person, is it possible to recogn...
We present a method for learning appearance models that can be used to recognise and track both 3D ...
We describe image-based synthesis techniques that make possible the creation of computer models of r...
A new technique is described for synthesizing images of faces from new viewpoints, when only a singl...
Images formed by a human face change with viewpoint. A new technique is described for synthesizing i...
Images formed by a human face change with viewpoint. A new technique is described for synthesizing i...
Images formed by a human face change with viewpoint. A new technique is described for synthesizing i...
A new technique is described for recognizing faces from new viewpoints. From a single 2D image of a ...
Abstract. Images formed by a human face change with viewpoint. A new technique is described for synt...
Images formed by a human face change with viewpoint. A new technique is described for synthesizing i...
When only a single image of a face is available, can we generate new images of the face across chang...
When only a single image of a face is available, can we generate new images of the face across chang...
When only a single image of a face is available, can we generate new images of the face across chang...
The need to generate new views of a 3D object from a single real image arises in several fields, inc...
"Can you imagine?" "Yes, I see ......" In human language mental imagery seems to be a natural abilit...
If we are provided a face database with only one example view per person, is it possible to recogn...
We present a method for learning appearance models that can be used to recognise and track both 3D ...
We describe image-based synthesis techniques that make possible the creation of computer models of r...
A new technique is described for synthesizing images of faces from new viewpoints, when only a singl...
Images formed by a human face change with viewpoint. A new technique is described for synthesizing i...
Images formed by a human face change with viewpoint. A new technique is described for synthesizing i...
Images formed by a human face change with viewpoint. A new technique is described for synthesizing i...
A new technique is described for recognizing faces from new viewpoints. From a single 2D image of a ...
Abstract. Images formed by a human face change with viewpoint. A new technique is described for synt...
Images formed by a human face change with viewpoint. A new technique is described for synthesizing i...
When only a single image of a face is available, can we generate new images of the face across chang...
When only a single image of a face is available, can we generate new images of the face across chang...
When only a single image of a face is available, can we generate new images of the face across chang...
The need to generate new views of a 3D object from a single real image arises in several fields, inc...
"Can you imagine?" "Yes, I see ......" In human language mental imagery seems to be a natural abilit...
If we are provided a face database with only one example view per person, is it possible to recogn...
We present a method for learning appearance models that can be used to recognise and track both 3D ...
We describe image-based synthesis techniques that make possible the creation of computer models of r...