Connections between object classification criteria using an ultrasonic bi-sonar system

Bogdan Kreczmer

International Journal of Applied Mathematics and Computer Science (2016)

  • Volume: 26, Issue: 1, page 123-132
  • ISSN: 1641-876X

Abstract

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The paper presents connections between the criteria which make three types of objects possible to be recognized, namely, edges, planes and corners. These criteria can be applied while a binaural sonar system is used. It is shown that the criteria are specific forms of a general equation. The form of the equation depends on a single coefficient. In the paper, the meaning of this coefficient is discussed. The constructions of the arrangement of objects are presented and are bound with values of the coefficient.

How to cite

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Bogdan Kreczmer. "Connections between object classification criteria using an ultrasonic bi-sonar system." International Journal of Applied Mathematics and Computer Science 26.1 (2016): 123-132. <http://eudml.org/doc/276493>.

@article{BogdanKreczmer2016,
abstract = {The paper presents connections between the criteria which make three types of objects possible to be recognized, namely, edges, planes and corners. These criteria can be applied while a binaural sonar system is used. It is shown that the criteria are specific forms of a general equation. The form of the equation depends on a single coefficient. In the paper, the meaning of this coefficient is discussed. The constructions of the arrangement of objects are presented and are bound with values of the coefficient.},
author = {Bogdan Kreczmer},
journal = {International Journal of Applied Mathematics and Computer Science},
keywords = {ultrasonic range-finder; multi-reflection; bi-sonar system},
language = {eng},
number = {1},
pages = {123-132},
title = {Connections between object classification criteria using an ultrasonic bi-sonar system},
url = {http://eudml.org/doc/276493},
volume = {26},
year = {2016},
}

TY - JOUR
AU - Bogdan Kreczmer
TI - Connections between object classification criteria using an ultrasonic bi-sonar system
JO - International Journal of Applied Mathematics and Computer Science
PY - 2016
VL - 26
IS - 1
SP - 123
EP - 132
AB - The paper presents connections between the criteria which make three types of objects possible to be recognized, namely, edges, planes and corners. These criteria can be applied while a binaural sonar system is used. It is shown that the criteria are specific forms of a general equation. The form of the equation depends on a single coefficient. In the paper, the meaning of this coefficient is discussed. The constructions of the arrangement of objects are presented and are bound with values of the coefficient.
LA - eng
KW - ultrasonic range-finder; multi-reflection; bi-sonar system
UR - http://eudml.org/doc/276493
ER -

References

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