Spelling suggestions: "subject:"gge synthesis"" "subject:"ege synthesis""
1 |
On facial age progression based on modified active appearance models with face textureBukar, Ali M., Ugail, Hassan, Hussain, Nosheen 09 1900 (has links)
No / Age progression that involves the reconstruction of facial appearance with a natural ageing effect has several applications. These include the search for missing people and identification of fugitives. The majority of age progression methods reported in the literature are data driven. Hence, such methods learn from training data and utilise statistical models such as 3D morphable models and active appearance models (AAM). Principal component analysis (PCA) which is a vital part of these models has an unfortunate drawback of averaging out texture details. Therefore, they work as a low pass filter and as such many of the face skin deformations and minor details become faded. Interestingly, recent work in 2D and 3D animation has shown that patches of the human face are somewhat similar when compared in isolation. Thus, researchers have proposed generating novel faces by compositing small face patches, usually from large image databases. Following these ideas, we propose a novel age progression model which synthesises aged faces using a hybrid of these two techniques. First, an invertible model of age synthesis is developed using AAM and sparse partial least squares regression (sPLS). Then the texture details of the face are enhanced using the patch-based synthesis approach. Our results show that the hybrid algorithm produces both unique and realistic images. Furthermore, our method demonstrates that the identity and ageing effects of subjects can be more emphasised.
|
2 |
A nonlinear appearance model for age progressionBukar, Ali M., Ugail, Hassan 15 October 2017 (has links)
No / Recently, automatic age progression has gained popularity due to its nu-merous applications. Among these is the search for missing people, in the UK alone up to 300,000 people are reported missing every year. Although many algorithms have been proposed, most of the methods are affected by image noise, illumination variations, and most importantly facial expres-sions. To this end we propose to build an age progression framework that utilizes image de-noising and expression normalizing capabilities of kernel principal component analysis (Kernel PCA). Here, Kernel PCA a nonlinear form of PCA that explores higher order correlations between input varia-bles, is used to build a model that captures the shape and texture variations of the human face. The extracted facial features are then used to perform age progression via a regression procedure. To evaluate the performance of the framework, rigorous tests are conducted on the FGNET ageing data-base. Furthermore, the proposed algorithm is used to progress images of Mary Boyle; a six-year-old that went missing over 39 years ago, she is considered Ireland’s youngest missing person. The algorithm presented in this paper could potentially aid, among other applications, the search for missing people worldwide.
|
3 |
Facial age synthesis using sparse partial least squares (the case of Ben Needham)Bukar, Ali M., Ugail, Hassan 06 June 2017 (has links)
Yes / Automatic facial age progression (AFAP) has been an active area of research in recent years.
This is due to its numerous applications which include searching for missing. This study
presents a new method of AFAP. Here, we use an Active Appearance Model (AAM) to extract
facial features from available images. An ageing function is then modelled using Sparse Partial
Least Squares Regression (sPLS). Thereafter, the ageing function is used to render new faces at
different ages. To test the accuracy of our algorithm, extensive evaluation is conducted using a
database of 500 face images with known ages. Furthermore, the algorithm is used to progress
Ben Needham’s facial image that was taken when he was 21 months old to the ages of 6, 14 and
22 years. The algorithm presented in this paper could potentially be used to enhance the search
for missing people worldwide.
|
4 |
Individualised model of facial age synthesis based on constrained regressionBukar, Ali M., Ugail, Hassan, Connah, David 10 November 2015 (has links)
Yes / Faces convey much information. Interestingly we humans have a remarkable ability of identifying, extracting, and interpreting this information. Recently automatic facial ageing (AFA) has gained popularity due to its numerous applications which include search for missing people, biometrics, and multimedia. The problem of AFA is faced with various challenges, including incomplete training datasets, unrestrained environments, ethnic and gender variations to mention but a few. This work presents a new approach to automatic facial ageing which involves the development of a person specific facial ageing system. A color based Active Appearance Model (AAM) is used to extract facial features. Then, regression is used to model an age estimator. Age synthesis is achieved by computing a solution that minimises the distance from the original face with the use of constrained regression. The model is tested on a challenging database of single image per person. Initial results suggest that plausible images can be rerendered at different ages, automatically using the AAM representation. Using the constrained regressor we are guaranteed to get estimated ages that are exact for an individual at a given age.
|
Page generated in 1.4741 seconds