We tackle the problem of large-scale object detection in images, where the number of objects can be arbitrarily large, and can exhibit significant overlap/occlusion. A successful approach to modelling the large-scale nature of this problem has been via point process density functions which jointly encode object qualities and spatial interactions. But the corresponding optimisation problem is typically difficult or intractable, and many of the best current methods rely on Monte Carlo Markov Chain (MCMC) simulation, which converges slowly in a large solution space. We propose an efficient point process inference for largescale object detection using discrete energy minimization. In particular, we approximate the solution space by a finite set...
In this dissertation, numerical optimization methods for three different classes of problems are pr...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...
International audienceIn this chapter, we consider a marked point process framework for analyzing hi...
Human detection in dense crowds is an important problem, as it is a prerequisite to many other visua...
International audiencePoint processes have demonstrated e fficiency and competitiveness when address...
In recent years, efficiency of large-scale object detec-tion has arisen as an important topic due to...
In this paper we introduce a probabilistic approach for extracting object ensembles from various ...
State-of-the-art detection systems are generally evaluated on their ability to exhaustively retrieve...
We address the limitations of Gaussian processes for multiclass classification in the setting where ...
<p> Object detection is an important task in computer vision and machine intelligence systems. Mult...
In this paper we introduce a probabilistic approach for extracting complex hierarchical object str...
International audienceIn this work, we address the problem of detecting objects in images by express...
The objective of this work is to detect all instances of a class (such as cells or people) in an ima...
We present new methods for fast Gaussian process (GP) inference in large-scale scenarios including e...
In this dissertation, numerical optimization methods for three different classes of problems are pr...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...
International audienceIn this chapter, we consider a marked point process framework for analyzing hi...
Human detection in dense crowds is an important problem, as it is a prerequisite to many other visua...
International audiencePoint processes have demonstrated e fficiency and competitiveness when address...
In recent years, efficiency of large-scale object detec-tion has arisen as an important topic due to...
In this paper we introduce a probabilistic approach for extracting object ensembles from various ...
State-of-the-art detection systems are generally evaluated on their ability to exhaustively retrieve...
We address the limitations of Gaussian processes for multiclass classification in the setting where ...
<p> Object detection is an important task in computer vision and machine intelligence systems. Mult...
In this paper we introduce a probabilistic approach for extracting complex hierarchical object str...
International audienceIn this work, we address the problem of detecting objects in images by express...
The objective of this work is to detect all instances of a class (such as cells or people) in an ima...
We present new methods for fast Gaussian process (GP) inference in large-scale scenarios including e...
In this dissertation, numerical optimization methods for three different classes of problems are pr...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...