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Background subtraction is a technique for detecting moving objects in video frames. A simple BS process involves building a model of the background and extracting regions of the foreground (moving objects) with the assumptions that the camera remains stationary and there exist no movements in the background. Video object extraction is a critical task in multimedia analysis and editing. Normally, the...
Dynamical shape priors are curical for level set-based non- rigid object tracking with noise, occlusions or background clutter. In this paper, we propose a level set tracking framework using dynamical shape priors to capture contours changes of an object in a periodic action sequence. The framework consists of two stages - off-line training and on-line tracking. During the off-line training stage,...
Model-based methods play a central role to solve different problems in computer vision. A particular important class of such methods rely on graph models where an object is decomposed into a number of parts, each one being represented by a graph vertex. A graph model-based tracking algorithm has been recently introduced in which a model is generated for a given frame (reference frame) and used to...
Tracking and recognition of objects in video sequences suffer from difficulties in learning appropriate object models. Often a high degree of supervision is required, including manual annotation of many training images. We aim at unsupervised learning of object models and present a novel way to build models based on motion information extracted from video sequences. We require a coarse delineation...
We present an effective tracking and segmentation algorithm in which tracking and segmentation are carried out consecutively. Object tracking in video sequences is difficult since the appearance of an object tends to change. An adaptive tracker that employs color and shape features is adopted to conquer this problem. The target is modeled based on discriminative features selected using foreground/background...
We propose a method for partitioning a stereo image sequence of a dynamic 3-dimensional (3D) scene into its most prominent moving groups with similar 3D motion. For this purpose we assign each image point one of a finite number of motion profiles. Each profile describes one dominant 3D motion in the imaged scene, i.e. translational and rotational 3D motion. Image segmentation is performed by assignment...
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