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Rapid Online Analysis of Local Feature Detectors and Their Complementarity

Rapid Online Analysis of Local Feature Detectors and Their Complementarity
Rapid Online Analysis of Local Feature Detectors and Their Complementarity
A vision system that can assess its own performance and take appropriate actions online to maximize its effectiveness would be a step towards achieving the long-cherished goal of imitating humans. This paper proposes a method for performing an online performance analysis of local feature detectors, the primary stage of many practical vision systems. It advocates the spatial distribution of local image features as a good performance indicator and presents a metric that can be calculated rapidly, concurs with human visual assessments and is complementary to existing offline measures such as repeatability. The metric is shown to provide a measure of complementarity for combinations of detectors, correctly reflecting the underlying principles of individual detectors. Qualitative results on well-established datasets for several state-of-the-art detectors are presented based on the proposed measure. Using a hypothesis testing approach and a newly-acquired, larger image database, statistically-significant performance differences are identified. Different detector pairs and triplets are examined quantitatively and the results provide a useful guideline for combining detectors in applications that require a reasonable spatial distribution of image features. A principled framework for combining feature detectors in these applications is also presented. Timing results reveal the potential of the metric for online applications.
local feature detection, coverage, complementarity, combining feature detectors, prediction-based framework
1424-8220
10876-10907
Ehsan, Shoaib
ae8922f0-dbe0-4b22-8474-98e84d852de7
Clark, Adrian F.
81c08359-a1fe-4380-adc0-2da681e19df0
McDonald-Maier, Klaus D.
d35c2e77-744a-4318-9d9d-726459e64db9
Ehsan, Shoaib
ae8922f0-dbe0-4b22-8474-98e84d852de7
Clark, Adrian F.
81c08359-a1fe-4380-adc0-2da681e19df0
McDonald-Maier, Klaus D.
d35c2e77-744a-4318-9d9d-726459e64db9

Ehsan, Shoaib, Clark, Adrian F. and McDonald-Maier, Klaus D. (2013) Rapid Online Analysis of Local Feature Detectors and Their Complementarity. Sensors, 13 (8), 10876-10907. (doi:10.3390/s130810876).

Record type: Article

Abstract

A vision system that can assess its own performance and take appropriate actions online to maximize its effectiveness would be a step towards achieving the long-cherished goal of imitating humans. This paper proposes a method for performing an online performance analysis of local feature detectors, the primary stage of many practical vision systems. It advocates the spatial distribution of local image features as a good performance indicator and presents a metric that can be calculated rapidly, concurs with human visual assessments and is complementary to existing offline measures such as repeatability. The metric is shown to provide a measure of complementarity for combinations of detectors, correctly reflecting the underlying principles of individual detectors. Qualitative results on well-established datasets for several state-of-the-art detectors are presented based on the proposed measure. Using a hypothesis testing approach and a newly-acquired, larger image database, statistically-significant performance differences are identified. Different detector pairs and triplets are examined quantitatively and the results provide a useful guideline for combining detectors in applications that require a reasonable spatial distribution of image features. A principled framework for combining feature detectors in these applications is also presented. Timing results reveal the potential of the metric for online applications.

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More information

Published date: August 2013
Keywords: local feature detection, coverage, complementarity, combining feature detectors, prediction-based framework

Identifiers

Local EPrints ID: 478880
URI: http://eprints.soton.ac.uk/id/eprint/478880
ISSN: 1424-8220
PURE UUID: 9f0a5828-645b-4b85-a99f-5e36a839d5bc
ORCID for Shoaib Ehsan: ORCID iD orcid.org/0000-0001-9631-1898

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Date deposited: 12 Jul 2023 16:36
Last modified: 17 Mar 2024 04:16

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Contributors

Author: Shoaib Ehsan ORCID iD
Author: Adrian F. Clark
Author: Klaus D. McDonald-Maier

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