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Performance characterization of image feature detectors in relation to the scene content utilizing a large image database

Performance characterization of image feature detectors in relation to the scene content utilizing a large image database
Performance characterization of image feature detectors in relation to the scene content utilizing a large image database
Selecting the most suitable local invariant feature detector for a particular application has rendered the task of evaluating feature detectors a critical issue in vision research. Although the literature, offers a variety of comparison works focusing on performance evaluation of image feature detectors under several types of image transformations, the influence of the scene content on the performance of local feature detectors has received little attention so far. This paper, aims to bridge this gap with a new framework for determining the type of scenes which maximize and minimize the performance of detectors in terms of repeatability rate. The results are presented for several state-of-the-art feature detectors that have been obtained using a large image database of 20482 images under JPEG compression, uniform light and blur changes with 539 different scenes captured from real-world scenarios. These results provide new insights into the behavior of feature detectors
Feature extraction, image analysis, performance analysis, feature detector, comparison, repeatability
2169-3536
8564-8573
Ferrarini, Bruno
a93ab204-5ccf-4b6d-a7c2-e02e65729924
Ehsan, Shoaib
ae8922f0-dbe0-4b22-8474-98e84d852de7
Leonardis, Ales
ed38f4ad-444e-4850-9391-34aaf12ce8fd
Rehman, Naveed Ur
8cd2ee50-73fb-4df1-9bb5-b278b911b70f
McDonald-Maier, Klaus D.
d35c2e77-744a-4318-9d9d-726459e64db9
Ferrarini, Bruno
a93ab204-5ccf-4b6d-a7c2-e02e65729924
Ehsan, Shoaib
ae8922f0-dbe0-4b22-8474-98e84d852de7
Leonardis, Ales
ed38f4ad-444e-4850-9391-34aaf12ce8fd
Rehman, Naveed Ur
8cd2ee50-73fb-4df1-9bb5-b278b911b70f
McDonald-Maier, Klaus D.
d35c2e77-744a-4318-9d9d-726459e64db9

Ferrarini, Bruno, Ehsan, Shoaib, Leonardis, Ales, Rehman, Naveed Ur and McDonald-Maier, Klaus D. (2018) Performance characterization of image feature detectors in relation to the scene content utilizing a large image database. IEEE Access, 6, 8564-8573. (doi:10.1109/ACCESS.2018.2795460).

Record type: Article

Abstract

Selecting the most suitable local invariant feature detector for a particular application has rendered the task of evaluating feature detectors a critical issue in vision research. Although the literature, offers a variety of comparison works focusing on performance evaluation of image feature detectors under several types of image transformations, the influence of the scene content on the performance of local feature detectors has received little attention so far. This paper, aims to bridge this gap with a new framework for determining the type of scenes which maximize and minimize the performance of detectors in terms of repeatability rate. The results are presented for several state-of-the-art feature detectors that have been obtained using a large image database of 20482 images under JPEG compression, uniform light and blur changes with 539 different scenes captured from real-world scenarios. These results provide new insights into the behavior of feature detectors

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More information

Published date: 18 January 2018
Keywords: Feature extraction, image analysis, performance analysis, feature detector, comparison, repeatability

Identifiers

Local EPrints ID: 473060
URI: http://eprints.soton.ac.uk/id/eprint/473060
ISSN: 2169-3536
PURE UUID: 92c1a6e7-e648-4682-94c8-0b52a48ca4b2
ORCID for Shoaib Ehsan: ORCID iD orcid.org/0000-0001-9631-1898

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Date deposited: 09 Jan 2023 18:44
Last modified: 17 Mar 2024 04:16

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Contributors

Author: Bruno Ferrarini
Author: Shoaib Ehsan ORCID iD
Author: Ales Leonardis
Author: Naveed Ur Rehman
Author: Klaus D. McDonald-Maier

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