Edge detection algorithm for omnidirectional images, based on superposition laws on Blach’s sphere and quantum entropy

Authors

  • Ayoub Ezzaki LCS laboratory, Physics Dept. Faculty of science, Mohammed V University in Rabat,
  • Dirar Benkhedra CeReMAR Center, Mathematic Dept. Faculty of science, Mohammed V University in Rabat
  • Mohamed El Ansari Informatics and Applications Laboratory, Computer Science Dept., Faculty of Science, My Ismail University in Meknes, Morocco
  • Lhoussaine Masmoudi LCS laboratory, Physics Dept. Faculty of science, Mohammed V University in Rabat,

Abstract

This paper presents an edge detection algorithm for omnidirectional images based on superposition law on Bloch’s sphere and quantum local entropy. Omnidirectional vision system has become an essential tool in computer vision, duo to its large field of view. However, classical image processing algorithms are not suitable to be applied directly in this type of images without taking into account the spatial information around each pixel. To show the performance of the proposed method, a set of experimentation was done on synthetic and real images devoted to agriculture applications. Later, Fram & Deutsh criterion has been adopted to evaluate its performance against three algorithms proposed on the literature and developed for omnidirectional images. The results show a good performance of the proposed method in term of edge quality, edge community and sensibility to noise.

Keywords

Edge detection, Omnidirectional images, Quantum image processing, Quantum entropy,

Published

2021-05-27

Downloads

Download data is not yet available.