We present an algorithm to predict landmarks on 3D human scans in varying poses. Our method is based on learning bending-invariant landmark properties. We also learn the spatial relationships between pairs of landmarks using canonical forms. The information is modeled by a Markov network, where each node of the network corresponds to a landmark position and where each edge of the network represents the spatial relationship between a pair of landmarks. We perform probabilistic inference over the Markov network to predict the landmark locations on human body scans in varying poses. We evaluated the algorithm on 200 models with different shapes and poses. The results show that most landmarks are predicted well.Peer reviewed: YesNRC publication...
Automatic landmarking has overcome a main drawback in Active Appearance Models (AAMs) computer visio...
Objective and Impact Statement. In this work, we develop a universal anatomical landmark detection m...
A novel method for learning and recognizing sequential image data is proposed, and promising applica...
We consider the problem of computing accurate point-to-point correspondences among a set of human bo...
Landmark/pose estimation in single monocular images has received much effort in computer vision due ...
Machine Learning aims at developing models able to accurately predict an output variable given the v...
Facial landmark recognition is a relevant supervised problem in computer vision, used as the foundat...
The effectiveness of appearance based person models strongly relies on a sufficiently large number o...
We address the problem of anatomical landmark localization using monocular camera information only. ...
The world is full of tiny but useful objects such as the door handle of a car or the light switch in...
International audienceIn this paper, a 3D Active Shape Model (3DASM) algorithm is presented to autom...
Anatomical landmarks on 3-D human body scans play key roles in shape-essential applications, includi...
Anatomical landmarks on 3-D human body scans play key roles in shape-essential applications, includi...
Fitting statistical 2D and 3D shape models to images is necessary for a variety of tasks, such as vi...
In this research, two novel methods on automatic landmark recognition and localization on 3D face sc...
Automatic landmarking has overcome a main drawback in Active Appearance Models (AAMs) computer visio...
Objective and Impact Statement. In this work, we develop a universal anatomical landmark detection m...
A novel method for learning and recognizing sequential image data is proposed, and promising applica...
We consider the problem of computing accurate point-to-point correspondences among a set of human bo...
Landmark/pose estimation in single monocular images has received much effort in computer vision due ...
Machine Learning aims at developing models able to accurately predict an output variable given the v...
Facial landmark recognition is a relevant supervised problem in computer vision, used as the foundat...
The effectiveness of appearance based person models strongly relies on a sufficiently large number o...
We address the problem of anatomical landmark localization using monocular camera information only. ...
The world is full of tiny but useful objects such as the door handle of a car or the light switch in...
International audienceIn this paper, a 3D Active Shape Model (3DASM) algorithm is presented to autom...
Anatomical landmarks on 3-D human body scans play key roles in shape-essential applications, includi...
Anatomical landmarks on 3-D human body scans play key roles in shape-essential applications, includi...
Fitting statistical 2D and 3D shape models to images is necessary for a variety of tasks, such as vi...
In this research, two novel methods on automatic landmark recognition and localization on 3D face sc...
Automatic landmarking has overcome a main drawback in Active Appearance Models (AAMs) computer visio...
Objective and Impact Statement. In this work, we develop a universal anatomical landmark detection m...
A novel method for learning and recognizing sequential image data is proposed, and promising applica...