2017
DOI: 10.35119/maio.v1i4.42
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FIRE: Fundus Image Registration dataset

Abstract: Purpose: Retinal image registration is a useful tool for medical professionals. However, performance evaluation of registration methods has not been consistently assessed in the literature. To address that, a dataset comprised of retinal image pairs annotated with ground truth and an evaluation protocol for registration methods is proposed.Methods: The dataset is comprised by 134 retinal fundus image pairs. These pairs are classified into three categories, according to characteristics that are relevant to indi… Show more

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Cited by 60 publications
(56 citation statements)
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“…Table 2 illustrates the experimental results of soft compression algorithm for multi-component images and other classical systems on Malaria, BCCD, Melanoma and FIRE 54 datasets. The statistics include mean, minimum, maximum and variance about compression ratio.…”
Section: Resultsmentioning
confidence: 99%
“…Table 2 illustrates the experimental results of soft compression algorithm for multi-component images and other classical systems on Malaria, BCCD, Melanoma and FIRE 54 datasets. The statistics include mean, minimum, maximum and variance about compression ratio.…”
Section: Resultsmentioning
confidence: 99%
“…The registration performance when utilizing CURVE feature points in the featurebased RIR technique was demonstrated on the FIRE dataset. CURVE was paired with the SIFT descriptor [41], and the registration performance of CURVE-SIFT was compared with five existing feature-based RIR techniques; GDB-ICP [13], Harris-PIIFD [10], Ghassabi's-SIFT [8], H-M 16 [16], H-M 17 [9] and D-Saddle-HOG [14]. Overall, CURVE-SIFT successfully registered 44.030% of the image pairs in the FIRE dataset, while the success rate of the existing feature-based RIR techniques is less than 27.612%.…”
Section: Discussionmentioning
confidence: 99%
“…s initial is set by referring to the size of the initial Gaussian image G 0,−1 . These values are determined by observing the retinal vessels with the thickest width on the fundus images from five datasets; CHASE_DB1 [33,34], DRIVE [35,36], HRF [37,38], STARE [39,40] and Fundus Image Registration (FIRE) dataset [41]. Furthermore, by considering scale or zoom less than 1.5 [8].…”
Section: Feature Selection Modulementioning
confidence: 99%
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“…We refer to our proposed method as DRMIME (differentiable registration with mutual information and matrix exponential). DRMIME is able to achieve state-of-the-art accuracy on two benchmark data sets: FIRE [4] and ANHIR [5].…”
Section: Introductionmentioning
confidence: 99%