Abstract: We present a Bag of words-based active object categorization technique implemented and tested on a humanoid robot. The robot is trained to categorize objects that are handed to it by a human operator. The robot uses hand and head motions to actively acquire a number of different views. A view planning scheme using entropy minimization reduces the number of views needed to achieve a valid decision. Categorization results are significantly improved by active elimination of background features using robot arm motion. Our experiments cover both, categorization when the object is handed to the robot in a fixed pose at training and testing, and object pose independent categorization. Results on a 4-class object database demonstrate the ...
The ability to form object categories is an important milestone in human infant development. We prop...
Abstract—We present a visual system for a humanoid robot that supports an efficient online learning ...
This paper presents a model of sensorimotor learning grounded in the sensory streams of a real human...
Abstract. We present active object categorization experiments with a real humanoid robot. For this p...
Interaction with its environment is a key requisite for a humanoid robot. Especially the ability to ...
For any robot, the ability to recognize and manipulate unknown objects is crucial to successfully wo...
The ability to recognize and manipulate unknown objects is crucial for any robot to successfully wor...
Abstract—This paper introduces a framework that allows a robot to form a single behavior–grounded ob...
This paper describes a new approach to object recognition for active vision systems that integrates ...
Active perception refers to a theoretical approach to the study of perception grounded on the idea t...
In this paper, we propose an active perception method for recognizing object categories based on the...
Robust human-robot interaction in dynamic domains requires that the robot au-tonomously learn from s...
International audienceObject categorization and manipulation are critical tasks for a robot to opera...
We present a visual system for a humanoid robot that supports an efficient online learning and recog...
Schmüdderich J, Brandl H, Bolder B, et al. Organizing Multimodal Perception for Autonomous Learning ...
The ability to form object categories is an important milestone in human infant development. We prop...
Abstract—We present a visual system for a humanoid robot that supports an efficient online learning ...
This paper presents a model of sensorimotor learning grounded in the sensory streams of a real human...
Abstract. We present active object categorization experiments with a real humanoid robot. For this p...
Interaction with its environment is a key requisite for a humanoid robot. Especially the ability to ...
For any robot, the ability to recognize and manipulate unknown objects is crucial to successfully wo...
The ability to recognize and manipulate unknown objects is crucial for any robot to successfully wor...
Abstract—This paper introduces a framework that allows a robot to form a single behavior–grounded ob...
This paper describes a new approach to object recognition for active vision systems that integrates ...
Active perception refers to a theoretical approach to the study of perception grounded on the idea t...
In this paper, we propose an active perception method for recognizing object categories based on the...
Robust human-robot interaction in dynamic domains requires that the robot au-tonomously learn from s...
International audienceObject categorization and manipulation are critical tasks for a robot to opera...
We present a visual system for a humanoid robot that supports an efficient online learning and recog...
Schmüdderich J, Brandl H, Bolder B, et al. Organizing Multimodal Perception for Autonomous Learning ...
The ability to form object categories is an important milestone in human infant development. We prop...
Abstract—We present a visual system for a humanoid robot that supports an efficient online learning ...
This paper presents a model of sensorimotor learning grounded in the sensory streams of a real human...