## Geometrical Shape Recognition Using a Cellular Automaton Architecture and its VLSI Implementation his paper presents a new, fast geometrical shape recognition technique based on the properties of cellular automata (CA). The VLSI implementation of the architecture developed for this Tpur pose is
Parallel shape recognition and its implementation on a fixed-size VLSI architecture
β Scribed by H.D. Cheng; X. Cheng
- Publisher
- Elsevier Science
- Year
- 1994
- Tongue
- English
- Weight
- 928 KB
- Volume
- 2
- Category
- Article
- ISSN
- 1069-0115
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β¦ Synopsis
Shape recognition is an important research area in pattern recognition. It also has wide practical applications in many fields. An attribute grammar approach to shape recognition combines both advantages of syntactic and statistical methods and makes shape recognition more accurate and efficient. However, the time complexity of a sequential shape recognition algorithm using attribute grammar is O(n 3) where n is the length of an input string. When the problem size is very large, it needs much more computing time; therefore, a high-speed parallel shape recognition algorithm is necessary to meet the demands of some real-time applications. This paper presents a parallel shape recognition algorithm, and also discusses the algorithm partition problem as well as its implementation on a fixed-size VLSI architecture. The proposed algorithm has time complexity O(n3/k 2) if using k Γk processing elements. When k=n, its time complexity is O(n). The experiment has been conducted to verify the performance of the proposed algorithm. The correctness of the algorithm partition and the behavior of proposed VLSI architecture have also been proved through the experiment. The results indicate that the proposed algorithm and the VLSI architecture could be very useful to imaging processing, pattern recognition, and related areas, especially for real-time applications.
1. Introduction
Shape is one of the most important properties of image patterns. It is widely used in many practical recognition applications.
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