Object localization/segmentation using generic shape priors

Generally object segmentation is an ill-posed problem. Approaches that use only plain image information will often fail. To overcome these limitations, prior knowledge (like information of the object contour) can be added to the segmentation process. In this paper, we present a novel generic shape model. We use the expertise from the field of object class recognition, namely a boundary-fragment-model (BFM) as prior knowledge for our level set segmentation approach. Commonly, shape models need synthetically generated or pre-segmented training sets that are usually trained on one specific object or a small group of objects. With our new approach we are able to train shape models for whole categories, which makes the segmentation method much more flexible. Additionally we overcome the difficulty of the correct initialization and reduce the segmentation effort. Experimental results demonstrate the excellent performance of our method on different types of objects (categories)

[1]  Timothy F. Cootes,et al.  A mixture model for representing shape variation , 1999, Image Vis. Comput..

[2]  O. Faugeras,et al.  Statistical shape influence in geodesic active contours , 2002, 5th IEEE EMBS International Summer School on Biomedical Imaging, 2002..

[3]  Anthony J. Yezzi,et al.  Curve evolution implementation of the Mumford-Shah functional for image segmentation, denoising, interpolation, and magnification , 2001, IEEE Trans. Image Process..

[4]  Tony F. Chan,et al.  Active contours without edges , 2001, IEEE Trans. Image Process..

[5]  Andrew Zisserman,et al.  Incremental learning of object detectors using a visual shape alphabet , 2006, 2006 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'06).

[6]  Rachid Deriche,et al.  A Multiphase Level Set Based Segmentation Framework with Pose Invariant Shape Priors , 2006, ACCV.

[7]  Timothy F. Cootes,et al.  Active Shape Models-Their Training and Application , 1995, Comput. Vis. Image Underst..

[8]  Rachid Deriche,et al.  Implicit Active Shape Models for 3D Segmentation in MR Imaging , 2004, MICCAI.

[9]  Nikos Paragios,et al.  Shape Priors for Level Set Representations , 2002, ECCV.

[10]  Yoav Freund,et al.  A decision-theoretic generalization of on-line learning and an application to boosting , 1997, EuroCOLT.

[11]  J. Sethian,et al.  Fronts propagating with curvature-dependent speed: algorithms based on Hamilton-Jacobi formulations , 1988 .

[12]  Yunmei Chen,et al.  Using Prior Shapes in Geometric Active Contours in a Variational Framework , 2002, International Journal of Computer Vision.

[13]  Daniel Cremers,et al.  Towards Recognition-Based Variational Segmentation Using Shape Priors and Dynamic Labeling , 2003, Scale-Space.

[14]  Pietro Perona,et al.  A Visual Category Filter for Google Images , 2004, ECCV.

[15]  Andrew Blake,et al.  Contour-based learning for object detection , 2005, Tenth IEEE International Conference on Computer Vision (ICCV'05) Volume 1.

[16]  R. Deriche,et al.  Multiregion Level Set Tracking with Transformation Invariant Shape Priors , 2006, ACCV.

[17]  Junaed Sattar Snakes , Shapes and Gradient Vector Flow , 2022 .

[18]  Andrew Zisserman,et al.  A Boundary-Fragment-Model for Object Detection , 2006, ECCV.

[19]  Rachid Deriche,et al.  Geodesic Active Regions: A New Framework to Deal with Frame Partition Problems in Computer Vision , 2002, J. Vis. Commun. Image Represent..

[20]  Andrew Zisserman,et al.  Extending Pictorial Structures for Object Recognition , 2004, BMVC.

[21]  S. Osher,et al.  Algorithms Based on Hamilton-Jacobi Formulations , 1988 .