In this paper, the Back Propagation (BP) network and Radial Basis Function (RBF) neural network are employed to recognize and reconstruct 3D freeform surface from 2D freehand sketch. Some tests and comparison experiments have been made to evaluate the performance for the reconstruction of freeform surfaces of both networks using simulation data. The experimental results show that both BP and RBF based freeform surface reconstruction methods are feasible; and the RBF network performed better. The RBF average point error between the reconstructed 3D surface data and the desired 3D surface data is less than 0.05 over all our 75 test sample data
This thesis explores the challenge of teaching a machine how to perceive shape from surface contour ...
We propose a self-organizing Radial Basis Function (RBF) neural network method for parameterization ...
The goal of this thesis was to investigate the neural 3D surface reconstruction from multiple views ...
This paper presents a novel free-form surface recognition method from 2D freehand sketching. The app...
A novel intelligent approach into 3D freeform surface reconstruction from planar sketches is propose...
A novel intelligent approach into 3D freeform surface reconstruction from planar sketches is propose...
A novel intelligent approach into 3D freeform surface reconstruction from planar sketches is propose...
The induction of a NURBS freeform surface from an on-line sketch is presented in this paper. This wo...
We propose a novel intelligent approach into 2D to 3D of on-line sketching in conceptual design. A M...
The research presented herein is a methodology for reconstructing a 3D object from a single 2D image...
The problem of Surface Reconstruction arises in many real world situations. We introduce in detail t...
The shape from shading problem refers to the well-known fact that most real images usually contain s...
Freehand sketching is widely regarded as an efficient and natural way for interaction between comput...
The objective of this research is to recover 3D freeform surfaces depicted in a single line drawing,...
We propose a deep learning approach to free-hand sketch recognition that achieves state-of-the-art p...
This thesis explores the challenge of teaching a machine how to perceive shape from surface contour ...
We propose a self-organizing Radial Basis Function (RBF) neural network method for parameterization ...
The goal of this thesis was to investigate the neural 3D surface reconstruction from multiple views ...
This paper presents a novel free-form surface recognition method from 2D freehand sketching. The app...
A novel intelligent approach into 3D freeform surface reconstruction from planar sketches is propose...
A novel intelligent approach into 3D freeform surface reconstruction from planar sketches is propose...
A novel intelligent approach into 3D freeform surface reconstruction from planar sketches is propose...
The induction of a NURBS freeform surface from an on-line sketch is presented in this paper. This wo...
We propose a novel intelligent approach into 2D to 3D of on-line sketching in conceptual design. A M...
The research presented herein is a methodology for reconstructing a 3D object from a single 2D image...
The problem of Surface Reconstruction arises in many real world situations. We introduce in detail t...
The shape from shading problem refers to the well-known fact that most real images usually contain s...
Freehand sketching is widely regarded as an efficient and natural way for interaction between comput...
The objective of this research is to recover 3D freeform surfaces depicted in a single line drawing,...
We propose a deep learning approach to free-hand sketch recognition that achieves state-of-the-art p...
This thesis explores the challenge of teaching a machine how to perceive shape from surface contour ...
We propose a self-organizing Radial Basis Function (RBF) neural network method for parameterization ...
The goal of this thesis was to investigate the neural 3D surface reconstruction from multiple views ...