A Probabilistic Prediction Method for Object Contour Tracking
نویسندگان
چکیده
In this paper we present an approach for probabilistic contour prediction in an object tracking system. We combine level-set methods for image segmentation with optical flow estimations based on probability distribution functions (pdf’s) calculated at each image position. Unlike most recent level-set methods that consider exclusively the sign of the level-set function to determine an object and its background, we introduce a novel interpretation of the value of the level-set function that reflects the confidence in the contour. To this end, in a sequence of consecutive images, the contour of an object is transformed according to the optical flow estimation and used as the initial object hypothesis in the following image. The values of the initial level-set function are set according to the optical flow pdf’s and thus provide an opportunity to incorporate the uncertainties of the optical flow estimation in the object contour prediction.
منابع مشابه
A Probabilistic Contour Observer for Online Visual Tracking
This paper presents an online, recursive filtering strategy for contour-based tracking. Approaching the tracking problem from an estimation perspective leads to an observer design for the visual track signal associated with an individual target in an image sequence. The track state of the observer is decomposed into group and shape components that describe the gross location and the nonrigid sh...
متن کاملFast Non-Rigid Object Boundary Tracking
This paper introduces a method which provides robust tracking results and accurately segmented object boundaries in short computation time. The first step of the algorithm is to apply a novel edge detector on efficiently calculated color probability maps in an object-specific Fisher color space. The proposed edge detector exploits context information by finding the maximally stable boundaries o...
متن کاملAdaptive Object Tracking with Online Statistical Model Update
In this paper, we propose a statistical model-based contour tracking algorithm based on the Condensation framework. The models include a novel object shape prediction model and two statistical object models. The object models consist of the grayscale histogram and contour shape PCA models computed from the previous tracking results. With the incremental singular value decomposition (SVD) techni...
متن کاملClassifier-based Contour Tracking for Rigid and Deformable Objects
This paper proposes a machine learning approach to the problem of modelbased contour tracking for rigid or deformable objects. The motion of the target is calculated by tracking its contours in a video sequence. We develop a probabilistic representation of contours that allows robust contour tracking in presence of texture and clutter. We use boosting to train a predictor of the conditional pro...
متن کاملUsing a Novel Concept of Potential Pixel Energy for Object Tracking
Abstract In this paper, we propose a new method for kernel based object tracking which tracks the complete non rigid object. Definition the union image blob and mapping it to a new representation which we named as potential pixels matrix are the main part of tracking algorithm. The union image blob is constructed by expanding the previous object region based on the histogram feature. The pote...
متن کامل