2019
DOI: 10.1109/access.2019.2950698
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Adaptive Learning Gabor Filter for Finger-Vein Recognition

Abstract: Presently, finger-vein recognition is a new research direction in the field of biometric recognition. The Gabor filter has been extensively used for finger-vein recognition; however, its parameters are difficult to adjust. To solve this problem, an adaptive-learning Gabor filter is presented herein. We combine convolutional neural networks with a Gabor filter to calculate the gradient of the Gabor-filter parameters, based on the objective function, and to then optimize its parameters via back-propagation. The … Show more

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Cited by 70 publications
(29 citation statements)
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References 53 publications
(62 reference statements)
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“…Two-dimensional Gabor filter is very sensitive to the texture edge of the image and its expression of frequency and orientation is consistent with the texture recognition mechanism of the human vision system [25]. Gabor filter can effectively enhance the edge, peak, valley, ridge contours and other underlying feature information.…”
Section: Vertical Phase Difference Coding Methods Based On Gabor Filtermentioning
confidence: 61%
“…Two-dimensional Gabor filter is very sensitive to the texture edge of the image and its expression of frequency and orientation is consistent with the texture recognition mechanism of the human vision system [25]. Gabor filter can effectively enhance the edge, peak, valley, ridge contours and other underlying feature information.…”
Section: Vertical Phase Difference Coding Methods Based On Gabor Filtermentioning
confidence: 61%
“…The results showed the effectiveness of the proposed method and outperformed the previous methods in both integrity and positional accuracy of the residential boundary. Zhang et al [43] combined the convolutional neural networks with a Gabor filter to calculate the gradient of the Gabor filter parameters. The calculation was based on the objective function, then the parameter optimization was performed via back-propagation.…”
Section: Related Workmentioning
confidence: 99%
“…In image processing, they are used for feature extraction, edge detection, texture analysis, etc. The Gabor function has the capability to capture the localized information with respect to spatial frequency, location, and selection of direction [20]. Mathematically Gabor filters [21,22]are expressed as a function: 2) Apply Gabor Filters: Three images are selected to form two pairs of images, where one image is common to both.…”
Section: B Workingmentioning
confidence: 99%