Active object recognition (AOR) aims at collecting additional information to improve recognition performance by purposefully adjusting the viewpoint of an agent. How to determine the next best viewpoint of the agent, i.e., viewpoint planning (VP), is a research focus. Most existing VP methods perform viewpoint exploration in the discrete viewpoint space, which have to sample viewpoint space and may bring in significant quantization error. To address this challenge, a continuous VP approach for AOR based on reinforcement learning is proposed. Specifically, we use two separate neural networks to model the VP policy as a parameterized Gaussian distribution and resort the proximal policy optimization framework to learn the policy. Furthermore, ...
We propose an active vision system for object acquisition. The core of our approach is a reinforceme...
One of the main claims of the active vision framework is that nding data on the basis of task requir...
In this work, we examine the literature of active object recognition in the past and present. We not...
Active object recognition (AOR) aims at collecting additional information to improve recognition per...
Active object recognition (AOR) aims at collecting additional information to improve recognition per...
Abstract. In the past decades most object recognition systems were based on passive approaches. But ...
Abstract. In the past decades most object recognition systems were based on passive approaches. But ...
Object recognition problems in computer vision are often based on single image data pro-cessing. In ...
A mobile agent with the task to classify its sensor pattern has to cope with ambiguous information. ...
Visual object recognition plays an important role in the fields of computer vision and robotics. Sta...
International audienceThis paper focuses on viewpoint planning for 3D active object recognition. The...
Active object recognition is a successful strategy to reduce uncertainty of single view recognition,...
In this paper, an active object recognition (AOR) method based on a prior feature distribution table...
Abstract. One of the main claims of the active vision framework is that finding data on the basis of...
By modelling complex scenes via a continuous volumetric scene function, neural radiance fields (NeRF...
We propose an active vision system for object acquisition. The core of our approach is a reinforceme...
One of the main claims of the active vision framework is that nding data on the basis of task requir...
In this work, we examine the literature of active object recognition in the past and present. We not...
Active object recognition (AOR) aims at collecting additional information to improve recognition per...
Active object recognition (AOR) aims at collecting additional information to improve recognition per...
Abstract. In the past decades most object recognition systems were based on passive approaches. But ...
Abstract. In the past decades most object recognition systems were based on passive approaches. But ...
Object recognition problems in computer vision are often based on single image data pro-cessing. In ...
A mobile agent with the task to classify its sensor pattern has to cope with ambiguous information. ...
Visual object recognition plays an important role in the fields of computer vision and robotics. Sta...
International audienceThis paper focuses on viewpoint planning for 3D active object recognition. The...
Active object recognition is a successful strategy to reduce uncertainty of single view recognition,...
In this paper, an active object recognition (AOR) method based on a prior feature distribution table...
Abstract. One of the main claims of the active vision framework is that finding data on the basis of...
By modelling complex scenes via a continuous volumetric scene function, neural radiance fields (NeRF...
We propose an active vision system for object acquisition. The core of our approach is a reinforceme...
One of the main claims of the active vision framework is that nding data on the basis of task requir...
In this work, we examine the literature of active object recognition in the past and present. We not...