Analysis of feature detector and descriptor combinations with a localization experiment for various performance metrics
Ertugrul Bayraktar, Pinar Boyraz

TL;DR
This study systematically compares various feature detector and descriptor combinations for image-matching in mobile robot localization, highlighting their performance across accuracy, speed, and matching quality.
Contribution
It provides a comprehensive performance evaluation of 23 detector-descriptor combinations using a large dataset and multiple metrics, offering insights into their suitability for localization tasks.
Findings
FAST-SURF had the lowest angle and distance differences.
SIFT-SURF achieved the highest accuracy at 98.41%.
ORB-BRIEF was the fastest method.
Abstract
The purpose of this study is to provide a detailed performance comparison of feature detector/descriptor methods, particularly when their various combinations are used for image-matching. The localization experiments of a mobile robot in an indoor environment are presented as a case study. In these experiments, 3090 query images and 127 dataset images were used. This study includes five methods for feature detectors (features from accelerated segment test (FAST), oriented FAST and rotated binary robust independent elementary features (BRIEF) (ORB), speeded-up robust features (SURF), scale invariant feature transform (SIFT), and binary robust invariant scalable keypoints (BRISK)) and five other methods for feature descriptors (BRIEF, BRISK, SIFT, SURF, and ORB). These methods were used in 23 different combinations and it was possible to obtain meaningful and consistent comparison results…
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