International audienceSearching for objects in an indoor environment can be drastically improved if a task-specific visual saliency is available. We describe a method to incrementally learn such an object-based visual saliency directly on a robot, using an environment exploration mechanism. We first define saliency based on a geometrical criterion and use this definition to segment salient elements given an attentive but costly and restrictive observation of the environment. These elements are used to train a fast classifier that predicts salient objects given large-scale visual features. In order to get a better and faster learning, we use an exploration strategy based on intrinsic motivation to drive our attentive observation. Our approac...
We present a novel approach for object category recognition that can find objects in challenging con...
A key challenge in robotic systems is how to interpret all the data coming from the sensors on-board...
Visual saliency is a computational process that identifies important locations and structure in the ...
International audienceSearching for objects in an indoor environment can be drastically improved if ...
International audienceSearching for objects in an indoor environment can be drastically improved if ...
International audienceThe problem of object localization and recognition on autonomous mobile robots...
International audienceThe use of intrinsic motivation for the task of learning sensori-motor propert...
The ability of robots to perform tasks in human environments has largely been limited to rather sim...
Conceiving autonomous perceptual systems, such as robots able to accomplish a set of tasks in a safe...
A robot companion has to understand a domotic environment in order to execute requests like « Search...
Visual Saliency aims to detect the most important regions of an image from a perceptual point of vie...
AbstractThis paper describes a reinforcement learning architecture that is capable of incorporating ...
International audienceWe present in this paper an original model to simulate visual perception based...
Attention is crucial for autonomous agents interacting with complex environments. In a real scenario...
In this paper we study how the use of a novel model of bottom-up saliency (visual attention), based ...
We present a novel approach for object category recognition that can find objects in challenging con...
A key challenge in robotic systems is how to interpret all the data coming from the sensors on-board...
Visual saliency is a computational process that identifies important locations and structure in the ...
International audienceSearching for objects in an indoor environment can be drastically improved if ...
International audienceSearching for objects in an indoor environment can be drastically improved if ...
International audienceThe problem of object localization and recognition on autonomous mobile robots...
International audienceThe use of intrinsic motivation for the task of learning sensori-motor propert...
The ability of robots to perform tasks in human environments has largely been limited to rather sim...
Conceiving autonomous perceptual systems, such as robots able to accomplish a set of tasks in a safe...
A robot companion has to understand a domotic environment in order to execute requests like « Search...
Visual Saliency aims to detect the most important regions of an image from a perceptual point of vie...
AbstractThis paper describes a reinforcement learning architecture that is capable of incorporating ...
International audienceWe present in this paper an original model to simulate visual perception based...
Attention is crucial for autonomous agents interacting with complex environments. In a real scenario...
In this paper we study how the use of a novel model of bottom-up saliency (visual attention), based ...
We present a novel approach for object category recognition that can find objects in challenging con...
A key challenge in robotic systems is how to interpret all the data coming from the sensors on-board...
Visual saliency is a computational process that identifies important locations and structure in the ...