Following the success of Convolutional Neural Networks (CNNs) on object recognition using 2D images, they are extended in this paper to process 3D data. Nearly most of current systems require huge amount of computation for dealing with large amount of data. In this paper, an efficient 3D volumetric object representation, Volumetric Accelerator (VOLA), is presented which requires much less memory than the normal volumetric representations. On this basis, a few 3D digit datasets using 2D MNIST and 2D digit fonts with different rotations along the x, y, and z axis are introduced. Finally, we introduce a combination of multiple CNN models based on the famous LeNet model. The trained CNN models based on the generated dataset have achieved the av...
International audienceIn this paper, we propose a new architecture of 3D deep neural network called ...
In this paper, we study the 3D volumetric modeling problem by adopting the Wasserstein introspective...
Neural networks represent a powerful means capable of processing various multi-media data. Two appli...
Following the success of Convolutional Neural Networks on object recognition and image classificatio...
In this work, we propose the implementation of a 3D object recognition system using Convolutional Ne...
The advancement of low-cost RGB-D and LiDAR three-dimensional (3D) sensors has permitted the obtainm...
Recognizing 3-D objects has a wide range of application areas from autonomous robots to self-driving...
A common approach to tackle 3D object recognition tasks is to project 3D data to multiple 2D images....
We consider the recent challenges of 3D shape analysis based on a volumetric CNN that requires a hug...
In this work, we carry out a study of the effect of adverse conditions, which characterize real-worl...
Title: Object recognition using 3D convolutional neural networks Author: Jaroslav Moravec Department...
Enabling a 2D- to 3D-reconstruction is an interesting future service for Mutate AB, where this thesi...
Robust 3D object detection and pose estimation is still a big challenging for robot vision. In this ...
The paradigm of Convolutional Neural Network (CNN) has already shown its potential for many challeng...
This paper proposes a convolutional neural network (CNN) with three branches based on the three-view...
International audienceIn this paper, we propose a new architecture of 3D deep neural network called ...
In this paper, we study the 3D volumetric modeling problem by adopting the Wasserstein introspective...
Neural networks represent a powerful means capable of processing various multi-media data. Two appli...
Following the success of Convolutional Neural Networks on object recognition and image classificatio...
In this work, we propose the implementation of a 3D object recognition system using Convolutional Ne...
The advancement of low-cost RGB-D and LiDAR three-dimensional (3D) sensors has permitted the obtainm...
Recognizing 3-D objects has a wide range of application areas from autonomous robots to self-driving...
A common approach to tackle 3D object recognition tasks is to project 3D data to multiple 2D images....
We consider the recent challenges of 3D shape analysis based on a volumetric CNN that requires a hug...
In this work, we carry out a study of the effect of adverse conditions, which characterize real-worl...
Title: Object recognition using 3D convolutional neural networks Author: Jaroslav Moravec Department...
Enabling a 2D- to 3D-reconstruction is an interesting future service for Mutate AB, where this thesi...
Robust 3D object detection and pose estimation is still a big challenging for robot vision. In this ...
The paradigm of Convolutional Neural Network (CNN) has already shown its potential for many challeng...
This paper proposes a convolutional neural network (CNN) with three branches based on the three-view...
International audienceIn this paper, we propose a new architecture of 3D deep neural network called ...
In this paper, we study the 3D volumetric modeling problem by adopting the Wasserstein introspective...
Neural networks represent a powerful means capable of processing various multi-media data. Two appli...