This paper presents a new statistical model for detecting and tracking deformable objects such as pedestrians, where large shape variations induced by local shape deformation can not be well captured by global methods such as PCA. The proposed model employs a Boltzmann distribution to capture the prior of local deformation, and embeds it into a Markov network which can be learned from data. A mean field variational analysis of this model provides computationally efficient algorithms for computing the likelihood of image observations and facilitate fast model training. Based on that, effective detection and tracking algorithms for deformable objects are proposed and applied to pedestrian detection and tracking. The proposed method has severa...
In this paper, we propose a pedestrian detection algorithm based on both appearance and motion featu...
Abstract A scene model and statistic learning based method for pedestrian detection in complicated r...
The goal of this research is to model an ``activity" performed by a group of moving and interac...
© 2017 IEEE. This paper proposes a novel Fast Deformable Model for Pedestrian Detection (FDMPD) to d...
This paper presents a robust multicue approach to the integrated detection and tracking of pedestria...
This paper describes a novel approach to analyzing and tracking the motion of structured deformable ...
Many existing methods for pedestrian detection have the limited detection performance in case of def...
Shape, Appearance and Motion are the most important cues for analyzing human movements in visual sur...
We propose to track an object of interest in video sequences based on a statistical model. The objec...
This paper presents the MOUGH (Mixture of Uniform and Gaussian Hough) Transform for shape-based obj...
Both detection and tracking people are challenging problems, especially in complex real world scenes...
Non-linear statistical models of deformation provide methods to learn a priori shape and deformation...
Automatic pedestrian detection for advanced driver assistance systems (ADASs) is still a challenging...
Tracking of deformable objects like humans is a basic operation in many surveillance applications. O...
<p>We describe a real-time pedestrian detection system intended for use in automotive applications. ...
In this paper, we propose a pedestrian detection algorithm based on both appearance and motion featu...
Abstract A scene model and statistic learning based method for pedestrian detection in complicated r...
The goal of this research is to model an ``activity" performed by a group of moving and interac...
© 2017 IEEE. This paper proposes a novel Fast Deformable Model for Pedestrian Detection (FDMPD) to d...
This paper presents a robust multicue approach to the integrated detection and tracking of pedestria...
This paper describes a novel approach to analyzing and tracking the motion of structured deformable ...
Many existing methods for pedestrian detection have the limited detection performance in case of def...
Shape, Appearance and Motion are the most important cues for analyzing human movements in visual sur...
We propose to track an object of interest in video sequences based on a statistical model. The objec...
This paper presents the MOUGH (Mixture of Uniform and Gaussian Hough) Transform for shape-based obj...
Both detection and tracking people are challenging problems, especially in complex real world scenes...
Non-linear statistical models of deformation provide methods to learn a priori shape and deformation...
Automatic pedestrian detection for advanced driver assistance systems (ADASs) is still a challenging...
Tracking of deformable objects like humans is a basic operation in many surveillance applications. O...
<p>We describe a real-time pedestrian detection system intended for use in automotive applications. ...
In this paper, we propose a pedestrian detection algorithm based on both appearance and motion featu...
Abstract A scene model and statistic learning based method for pedestrian detection in complicated r...
The goal of this research is to model an ``activity" performed by a group of moving and interac...