Are Gabor Kernels Optimal for Iris Recognition?
- URL: http://arxiv.org/abs/2002.08959v1
- Date: Thu, 20 Feb 2020 17:51:11 GMT
- Title: Are Gabor Kernels Optimal for Iris Recognition?
- Authors: Aidan Boyd, Adam Czajka, Kevin Bowyer
- Abstract summary: Gabor kernels are widely accepted as dominant filters for iris recognition.
We learn data-driven kernels that can be easily transplanted into open-source iris recognition software.
- Score: 4.658023970671232
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Gabor kernels are widely accepted as dominant filters for iris recognition.
In this work we investigate, given the current interest in neural networks, if
Gabor kernels are the only family of functions performing best in iris
recognition, or if better filters can be learned directly from iris data. We
use (on purpose) a single-layer convolutional neural network as it mimics an
iris code-based algorithm. We learn two sets of data-driven kernels; one
starting from randomly initialized weights and the other from open-source set
of Gabor kernels. Through experimentation, we show that the network does not
converge on Gabor kernels, instead converging on a mix of edge detectors, blob
detectors and simple waves. In our experiments carried out with three
subject-disjoint datasets we found that the performance of these learned
kernels is comparable to the open-source Gabor kernels. These lead us to two
conclusions: (a) a family of functions offering optimal performance in iris
recognition is wider than Gabor kernels, and (b) we probably hit the maximum
performance for an iris coding algorithm that uses a single convolutional
layer, yet with multiple filters. Released with this work is a framework to
learn data-driven kernels that can be easily transplanted into open-source iris
recognition software (for instance, OSIRIS -- Open Source IRIS).
Related papers
- Osiris: A Systolic Approach to Accelerating Fully Homomorphic Encryption [3.16990548935142]
We show how fully homomorphic encryption (FHE) can be accelerated using a systolic architecture.
We propose a new data tiling technique that we name limb interleaving.
Our evaluation of Osiris shows it outperforms the prior state-of-the-art accelerator on all standard benchmarks.
arXiv Detail & Related papers (2024-08-18T20:58:54Z) - Spectral Truncation Kernels: Noncommutativity in $C^*$-algebraic Kernel Machines [12.11705128358537]
We propose a new class of positive definite kernels based on the spectral truncation.
We show that the proposed kernels fill the gap between existing separable and commutative kernels.
The flexibility of the proposed class of kernels allows us to go beyond previous separable and commutative kernels.
arXiv Detail & Related papers (2024-05-28T04:47:12Z) - Compacting Binary Neural Networks by Sparse Kernel Selection [58.84313343190488]
This paper is motivated by a previously revealed phenomenon that the binary kernels in successful BNNs are nearly power-law distributed.
We develop the Permutation Straight-Through Estimator (PSTE) that is able to not only optimize the selection process end-to-end but also maintain the non-repetitive occupancy of selected codewords.
Experiments verify that our method reduces both the model size and bit-wise computational costs, and achieves accuracy improvements compared with state-of-the-art BNNs under comparable budgets.
arXiv Detail & Related papers (2023-03-25T13:53:02Z) - Lifelong Bandit Optimization: No Prior and No Regret [70.94238868711952]
We develop LIBO, an algorithm which adapts to the environment by learning from past experience.
We assume a kernelized structure where the kernel is unknown but shared across all tasks.
Our algorithm can be paired with any kernelized or linear bandit algorithm and guarantees optimal performance.
arXiv Detail & Related papers (2022-10-27T14:48:49Z) - Incorporating Prior Knowledge into Neural Networks through an Implicit
Composite Kernel [1.6383321867266318]
Implicit Composite Kernel (ICK) is a kernel that combines a kernel implicitly defined by a neural network with a second kernel function chosen to model known properties.
We demonstrate ICK's superior performance and flexibility on both synthetic and real-world data sets.
arXiv Detail & Related papers (2022-05-15T21:32:44Z) - Kernel Identification Through Transformers [54.3795894579111]
Kernel selection plays a central role in determining the performance of Gaussian Process (GP) models.
This work addresses the challenge of constructing custom kernel functions for high-dimensional GP regression models.
We introduce a novel approach named KITT: Kernel Identification Through Transformers.
arXiv Detail & Related papers (2021-06-15T14:32:38Z) - Random Features for the Neural Tangent Kernel [57.132634274795066]
We propose an efficient feature map construction of the Neural Tangent Kernel (NTK) of fully-connected ReLU network.
We show that dimension of the resulting features is much smaller than other baseline feature map constructions to achieve comparable error bounds both in theory and practice.
arXiv Detail & Related papers (2021-04-03T09:08:12Z) - Isolation Distributional Kernel: A New Tool for Point & Group Anomaly
Detection [76.1522587605852]
Isolation Distributional Kernel (IDK) is a new way to measure the similarity between two distributions.
We demonstrate IDK's efficacy and efficiency as a new tool for kernel based anomaly detection for both point and group anomalies.
arXiv Detail & Related papers (2020-09-24T12:25:43Z) - End-to-end Kernel Learning via Generative Random Fourier Features [31.57596752889935]
Random Fourier features (RFFs) provide a promising way for kernel learning in a spectral case.
In this paper, we consider a one-stage process that incorporates the kernel learning and linear learner into a unifying framework.
arXiv Detail & Related papers (2020-09-10T00:27:39Z) - Learning Deep Kernels for Non-Parametric Two-Sample Tests [50.92621794426821]
We propose a class of kernel-based two-sample tests, which aim to determine whether two sets of samples are drawn from the same distribution.
Our tests are constructed from kernels parameterized by deep neural nets, trained to maximize test power.
arXiv Detail & Related papers (2020-02-21T03:54:23Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.