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Publication detail
JELÍNEK, A. ŽALUD, L.
Original Title
Line segment similarity criterion for vector images
Type
conference paper
Language
English
Original Abstract
Vector representation of the images, maps, schematics and other information is widely used, and in computer processing of these data, comparison and similarity evaluation of two sets of line segments is often necessary. Various techniques are already in use, but these mostly rely on the algorithmic functions such as minimum/maximum of two or more variables, which limits their applicability for many optimization algorithms. In this paper we propose a novel area based criterion function for line segment similarity evaluation, which is easily differentiable and the derivatives are continuous in the whole domain of definition. The second important feature is the possibility of preprocessing of the input data. Once finished, it takes constant time to evaluate the criterion for different transformations of one of the input sets of line segments. This has potential to greatly speed up iterative matching algorithms. In such case, the computational complexity is reduced from O(pt) to O(p+t), where p is the number of line segment pairs being examined and t is the number of transformations performed.
Keywords
Vector;Line Segment;Similarity;Distance;Criterion
Authors
JELÍNEK, A.; ŽALUD, L.
Released
1. 6. 2017
Location
Plzeň
ISBN
978-80-86943-45-9
Book
Computer Science Research Notes
Edition
1
2464-4617
Periodical
State
Czech Republic
Pages from
73
Pages to
79
Pages count
7
URL
https://dspace5.zcu.cz/handle/11025/29737
BibTex
@inproceedings{BUT138191, author="Aleš {Jelínek} and Luděk {Žalud}", title="Line segment similarity criterion for vector images", booktitle="Computer Science Research Notes", year="2017", series="1", journal="Computer Science Research Notes", pages="73--79", address="Plzeň", isbn="978-80-86943-45-9", issn="2464-4617", url="https://dspace5.zcu.cz/handle/11025/29737" }