The surface reconstruction problem, which consists in the search of the surface that best describes a given set of points, is of interest in many application fields (e.g., design, archeology, medicine, and entertainment). This can be viewed as a supervised learning problem, where the vector coordinates (or other features) of each point is an input instance, while a further coordinate is an output label. The approximation function provides a law to obtain labels from instances. Several effective computational intelligence paradigms have been developed for solving the surface reconstruction problem, e.g., Multi-layer Perceptron Networks, Radial Basis Function (RBF) Networks, Self-Organizing Maps (SOM), and Support Vector Machines (SVM). Ho...
The goal of surface reconstruction is to obtain a continuous representation of a surface described b...
This paper refers to the problem of adaptability over an infinite period of time, regarding dynamic ...
The extension of convolutional neural networks (CNNs) to non-Euclidean geometries has led to multipl...
The problem of Surface Reconstruction arises in many real world situations. We introduce in detail t...
Surface reconstructionis a hard key problem in the industrial domain of computer-aided design (CAD) ...
We describe a Learning algorithm for surface reconstruction based on an incrementally expanding Neur...
We study the use of neural network algorithms in surface reconstruction from an unorganized point cl...
This paper introduces a new hybrid functional-neural approach for surface reconstruction. Our approa...
This paper presents a new surface reconstruction method based on complex form functions, genetic alg...
Abstract: We present a multiresolution surface reconstruction method from point clouds in 3D space b...
Applications based on three-dimensional object models are today very common, and can be found in man...
Surface reconstruction is a problem in the field of computational geometry that is concerned with re...
We survey and benchmark traditional and novel learning-based algorithms that address the problem of ...
We introduce a novel technique for surface reconstruction from unorganized points by applying Kohone...
This article presents a study of the application of Computational Intelligence (CI) methods to the p...
The goal of surface reconstruction is to obtain a continuous representation of a surface described b...
This paper refers to the problem of adaptability over an infinite period of time, regarding dynamic ...
The extension of convolutional neural networks (CNNs) to non-Euclidean geometries has led to multipl...
The problem of Surface Reconstruction arises in many real world situations. We introduce in detail t...
Surface reconstructionis a hard key problem in the industrial domain of computer-aided design (CAD) ...
We describe a Learning algorithm for surface reconstruction based on an incrementally expanding Neur...
We study the use of neural network algorithms in surface reconstruction from an unorganized point cl...
This paper introduces a new hybrid functional-neural approach for surface reconstruction. Our approa...
This paper presents a new surface reconstruction method based on complex form functions, genetic alg...
Abstract: We present a multiresolution surface reconstruction method from point clouds in 3D space b...
Applications based on three-dimensional object models are today very common, and can be found in man...
Surface reconstruction is a problem in the field of computational geometry that is concerned with re...
We survey and benchmark traditional and novel learning-based algorithms that address the problem of ...
We introduce a novel technique for surface reconstruction from unorganized points by applying Kohone...
This article presents a study of the application of Computational Intelligence (CI) methods to the p...
The goal of surface reconstruction is to obtain a continuous representation of a surface described b...
This paper refers to the problem of adaptability over an infinite period of time, regarding dynamic ...
The extension of convolutional neural networks (CNNs) to non-Euclidean geometries has led to multipl...