1 January 1994 Artificial neural networks and model-based recognition of three-dimensional objects from two-dimensional images
Chih-Ho Chao, Atam P. Dhawan
Author Affiliations +
Abstract
A computer vision system is developed for 3-D object recognition using artificial neural networks and a model-based top-down feedback analysis approach. This system can adequately address the problems caused by an incomplete edge map provided by a low-level processor for 3-D representation and recognition. The system uses key patterns that are selected using a priority assignment. The highest priority is given to the key pattern with the most connected node and associated features. The features are space invariant structures and sets of orientation for edge primitives. The labeled key features are provided as input to an artificial neural network for matching with model key patterns. A Hopfield-Tank network is appiled to two levels of matching to increase the computational effectiveness. The first matching is to choose the class of the possible model and the second matching is to find the model closest to the candidate. The result of such matchings is utilized in generating the model-driven top-down feedback analysis. This model is then rotated in 3-D space to find the best match with the candidate and to provide the additional features in 3-D. In the case of multiple objects, a dynamic search strategy is adopted to recognize objects using one pattern at a time. This strategy is also useful in recognizing occluded objects. The experimental results are presented to show the capabiilty and effectiveness of the system.
Chih-Ho Chao and Atam P. Dhawan "Artificial neural networks and model-based recognition of three-dimensional objects from two-dimensional images," Journal of Electronic Imaging 3(1), (1 January 1994). https://doi.org/10.1117/12.165061
Published: 1 January 1994
Lens.org Logo
CITATIONS
Cited by 1 scholarly publication.
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
3D modeling

Neurons

3D image processing

Model-based design

Neural networks

Visual process modeling

Computing systems

Back to Top