International audienceIn this paper, we propose a new architecture of 3D deep neural network called 3D Hahn Moments Convolutional Neural Network (3D HMCNN) to enhance the classification accuracy and reduce the computational complexity of a 3D pattern recognition system. The proposed architecture is derived by combining the concepts of image Hahn moments and convolutional neural network (CNN), frequently utilized in pattern recognition applications. Indeed, the advantages of the moments concerning their global information coding mechanism even in lower orders, along with the high effectiveness of the CNN, are combined to make up the proposed robust network. The aim of this work is to investigate the classification capabilities of 3D HMCNN on...
The advancement of low-cost RGB-D and LiDAR three-dimensional (3D) sensors has permitted the obtainm...
With the rapid development of three-dimensional (3D) technology and an increase in the number of ava...
This paper proposes a method for recognition and classification of 3D objects. The method is based o...
International audienceIn this paper, we propose a new architecture of 3D deep neural network called ...
Following the success of Convolutional Neural Networks on object recognition and image classificatio...
The paradigm of Convolutional Neural Network (CNN) has already shown its potential for many challeng...
In this work, we propose the implementation of a 3D object recognition system using Convolutional Ne...
Neural networks represent a powerful means capable of processing various multi-media data. Two appli...
Following the success of Convolutional Neural Networks (CNNs) on object recognition using 2D images,...
3D Object Classification Using Neural Networks Bc. Miroslav Krabec Classification of 3D objects is o...
3D surface moment invariants are a kind of integral invariants under translation, uniform scaling an...
Virtual reality, driverless cars, and robotics all make extensive use of 3D shape classification. On...
A common approach to tackle 3D object recognition tasks is to project 3D data to multiple 2D images....
Abstract:- This paper addresses a performance analysis of affine moment invariants for 3D object rec...
In order to solve the problem that the existing 3D model recognition methods based on deep learning ...
The advancement of low-cost RGB-D and LiDAR three-dimensional (3D) sensors has permitted the obtainm...
With the rapid development of three-dimensional (3D) technology and an increase in the number of ava...
This paper proposes a method for recognition and classification of 3D objects. The method is based o...
International audienceIn this paper, we propose a new architecture of 3D deep neural network called ...
Following the success of Convolutional Neural Networks on object recognition and image classificatio...
The paradigm of Convolutional Neural Network (CNN) has already shown its potential for many challeng...
In this work, we propose the implementation of a 3D object recognition system using Convolutional Ne...
Neural networks represent a powerful means capable of processing various multi-media data. Two appli...
Following the success of Convolutional Neural Networks (CNNs) on object recognition using 2D images,...
3D Object Classification Using Neural Networks Bc. Miroslav Krabec Classification of 3D objects is o...
3D surface moment invariants are a kind of integral invariants under translation, uniform scaling an...
Virtual reality, driverless cars, and robotics all make extensive use of 3D shape classification. On...
A common approach to tackle 3D object recognition tasks is to project 3D data to multiple 2D images....
Abstract:- This paper addresses a performance analysis of affine moment invariants for 3D object rec...
In order to solve the problem that the existing 3D model recognition methods based on deep learning ...
The advancement of low-cost RGB-D and LiDAR three-dimensional (3D) sensors has permitted the obtainm...
With the rapid development of three-dimensional (3D) technology and an increase in the number of ava...
This paper proposes a method for recognition and classification of 3D objects. The method is based o...