Hidden State Shape Models (HSSMs) [2], a variant of Hidden Markov Models (HMMs) [9], were proposed to detect shape classes of variable structure in cluttered images. In this paper, we formulate a probabilistic framework for HSSMs which provides two major improvements in comparison to the previous method [2]. First, while the method in [2] required the scale of the object to be passed as an input, the method proposed here estimates the scale of the object automatically. This is achieved by introducing a new term for the observation probability that is based on a object-clutter feature model. Second, a segmental HMM [6, 8] is applied to model the “duration probability ” of each HMM state, which is learned from the shape statistics in a traini...
An interesting challenge in image processing is to classify shapes of polygons formed by selecting a...
We describe a hierarchical probabilistic model for the detection and recognition of objects in clutt...
This paper aims at detecting objects via a partial shape matching in unlabeled real images. As both ...
This paper is concerned with an application of Hidden Markov Models (HMMs) to the generation of sha...
Abstract. This paper proposes a method for detecting shapes of variable structure in images with clu...
This paper proposes a method for detecting shapes of variable structure in images with clutter. The...
An ideal shape model should be both invariant to global transformations and robust to local distorti...
We study the problem of detecting the shape anomalies In this paper. Our shape anomaly detection alg...
This paper presents a new framework for shape modeling and analysis. A shape instance is described b...
This study deals with the shape recognition problem using the Hidden Markov Model (HMM). In many pat...
International audienceWe present an object class detection approach which fully integrates the compl...
This research was supported by the EADS foundation, INRIA, CNRS, and SNSF. V. Ferrari was funded by ...
This contribution describes a statistical approach for learning and classication of two{ dimensional...
We present a novel statistical framework for detect-ing pre-determined shape classes in 2D cluttered...
Given the shape information of an object, can we find visually meaningful "n " objects in ...
An interesting challenge in image processing is to classify shapes of polygons formed by selecting a...
We describe a hierarchical probabilistic model for the detection and recognition of objects in clutt...
This paper aims at detecting objects via a partial shape matching in unlabeled real images. As both ...
This paper is concerned with an application of Hidden Markov Models (HMMs) to the generation of sha...
Abstract. This paper proposes a method for detecting shapes of variable structure in images with clu...
This paper proposes a method for detecting shapes of variable structure in images with clutter. The...
An ideal shape model should be both invariant to global transformations and robust to local distorti...
We study the problem of detecting the shape anomalies In this paper. Our shape anomaly detection alg...
This paper presents a new framework for shape modeling and analysis. A shape instance is described b...
This study deals with the shape recognition problem using the Hidden Markov Model (HMM). In many pat...
International audienceWe present an object class detection approach which fully integrates the compl...
This research was supported by the EADS foundation, INRIA, CNRS, and SNSF. V. Ferrari was funded by ...
This contribution describes a statistical approach for learning and classication of two{ dimensional...
We present a novel statistical framework for detect-ing pre-determined shape classes in 2D cluttered...
Given the shape information of an object, can we find visually meaningful "n " objects in ...
An interesting challenge in image processing is to classify shapes of polygons formed by selecting a...
We describe a hierarchical probabilistic model for the detection and recognition of objects in clutt...
This paper aims at detecting objects via a partial shape matching in unlabeled real images. As both ...