We present a new framework for recognizing planar object classes, which is based on local feature detectors and a probabilistic model of the spatial arrangement of the features. The allowed object deformations are represented through shape statistics, which are learned from examples. Instances of an object in an image are detected by finding the appropriate features in the correct spatial configuration. The algorithm is robust with respect to partial occlusion, detector false alarms, and missed features. A 94% success rate was achieved for the problem of locating quasi-frontal views of faces in cluttered scenes
We present a method to learn object class models from unlabeled and unsegmented cluttered scenes for...
We present a method to learn object class models from unlabeled and unsegmented cluttered scenes for...
During the course of this thesis, two scenarios are considered. In the first one, we contribute to f...
We present a new framework for recognizing planar object classes, which is based on local feature de...
Many object classes, including human faces, can be modeled as a set of characteristic parts arranged...
Many object classes, including human faces, can be modeled as a set of characteristic parts arranged...
Object recognition has drawn great attention in industrial application especially in automated feedi...
Object recognition has drawn great attention in industrial application especially in automated feedi...
Object recognition has drawn great attention in industrial application especially in automated feedi...
Object recognition has drawn great attention in industrial application especially in automated feedi...
. Many object classes, including human faces, can be modeled as a set of characteristic parts arrang...
In this paper, we describe an algorithm for object recognition that explicitly models and estimates ...
Abstract. We present a new class of statistical models for part-based object recognition. These mode...
Abstract. We focus on learning graphical models of object classes from arbitrary instances of object...
International audienceIn this work, we propose a new formulation of the objects modeling combining g...
We present a method to learn object class models from unlabeled and unsegmented cluttered scenes for...
We present a method to learn object class models from unlabeled and unsegmented cluttered scenes for...
During the course of this thesis, two scenarios are considered. In the first one, we contribute to f...
We present a new framework for recognizing planar object classes, which is based on local feature de...
Many object classes, including human faces, can be modeled as a set of characteristic parts arranged...
Many object classes, including human faces, can be modeled as a set of characteristic parts arranged...
Object recognition has drawn great attention in industrial application especially in automated feedi...
Object recognition has drawn great attention in industrial application especially in automated feedi...
Object recognition has drawn great attention in industrial application especially in automated feedi...
Object recognition has drawn great attention in industrial application especially in automated feedi...
. Many object classes, including human faces, can be modeled as a set of characteristic parts arrang...
In this paper, we describe an algorithm for object recognition that explicitly models and estimates ...
Abstract. We present a new class of statistical models for part-based object recognition. These mode...
Abstract. We focus on learning graphical models of object classes from arbitrary instances of object...
International audienceIn this work, we propose a new formulation of the objects modeling combining g...
We present a method to learn object class models from unlabeled and unsegmented cluttered scenes for...
We present a method to learn object class models from unlabeled and unsegmented cluttered scenes for...
During the course of this thesis, two scenarios are considered. In the first one, we contribute to f...