A lifespan face synthesis (LFS) model aims to generate a set of photo-realistic face images of a person's whole life, given only one snapshot as reference. The generated face image given a target age code is expected to be age-sensitive reflected by bio-plausible transformations of shape and texture, while being identity preserving. This is extremely challenging because the shape and texture characteristics of a face undergo separate and highly nonlinear transformations w.r.t. age. Most recent LFS models are based on generative adversarial networks (GANs) whereby age code conditional transformations are applied to a latent face representation. They benefit greatly from the recent advancements of GANs. However, without explicitly disentangli...
Facial age simulation is a topic that has been gaining increasing interest in computer vision. In th...
Note:Age changes cause major variations in the appearance of human faces. Due to many lifestyle fact...
Face recognition across age progression is remains one of the areas most challenging tasks now a day...
Linear age progression models which are largely used in prototype and conventional approaches usual...
Age progression and regression refers to aesthetically rendering a given face image to present effec...
We explore multiple ideas on face aging, and we finally settle down on constructing a Face Reconstru...
Despite the remarkable progress in face recognition related technologies, reliably recognizing faces...
Aging is a complex problem because at different age points different changes occur in the human face...
The use of computers to simulate facial aging or rejuvenation has long been a hot research topic in ...
The ability to synthesise the effects of ageing in human faces has numerous uses from aiding the sea...
Age-invariant face recognition is still a challenging research problem due to the complex aging proc...
NoAge progression that involves the reconstruction of facial appearance with a natural ageing effect...
Abstract One of the challenges in automatic face recognition is to achieve temporal invariance. In o...
The ability to synthesise the effects of ageing in human faces has numerous uses from aiding the sea...
The age-invariant face recognition (AIFR) is a relatively new area of research in the face recogniti...
Facial age simulation is a topic that has been gaining increasing interest in computer vision. In th...
Note:Age changes cause major variations in the appearance of human faces. Due to many lifestyle fact...
Face recognition across age progression is remains one of the areas most challenging tasks now a day...
Linear age progression models which are largely used in prototype and conventional approaches usual...
Age progression and regression refers to aesthetically rendering a given face image to present effec...
We explore multiple ideas on face aging, and we finally settle down on constructing a Face Reconstru...
Despite the remarkable progress in face recognition related technologies, reliably recognizing faces...
Aging is a complex problem because at different age points different changes occur in the human face...
The use of computers to simulate facial aging or rejuvenation has long been a hot research topic in ...
The ability to synthesise the effects of ageing in human faces has numerous uses from aiding the sea...
Age-invariant face recognition is still a challenging research problem due to the complex aging proc...
NoAge progression that involves the reconstruction of facial appearance with a natural ageing effect...
Abstract One of the challenges in automatic face recognition is to achieve temporal invariance. In o...
The ability to synthesise the effects of ageing in human faces has numerous uses from aiding the sea...
The age-invariant face recognition (AIFR) is a relatively new area of research in the face recogniti...
Facial age simulation is a topic that has been gaining increasing interest in computer vision. In th...
Note:Age changes cause major variations in the appearance of human faces. Due to many lifestyle fact...
Face recognition across age progression is remains one of the areas most challenging tasks now a day...