Efficient Analysis of Large-Size Bio-Signals Based on Orthogonal Generalized Laguerre Moments of Fractional Orders and Schwarz–Rutishauser Algorithm
Abstract
:1. Introduction
- A three-term second-order recurrence formula for the normalized form of FrGLMs has been derived.
- A recursive formula for the squared norm has been derived.
- A novel QR-decomposition approach called Schwarz–Rutishauser gives more numerical stability and less processing time than the classical approaches.
2. Fractional-Order Generalized Laguerre Orthogonal Moments
3. Proposed Computation of Fractional Laguerre Orthogonal Polynomials
4. Schwarz–Rutishauser Algorithm
5. Proposed Computation of Fractional Laguerre Orthogonal Moments Based on the Schwarz–Rutishauser Algorithm
An Algorithm of the Proposed Method
Algorithm 1. The algorithm’s pseudo-code |
{—— Step 1: Determine the value L and ——} Input the original signal Set the highest value (L) of variable x. Set a polynomial’s order (). {——Step 2: Calculate the initial conditions of the polynomials——} for x←0 to L-1 do Calculate using Equation (6). Calculate using Equation (7). {—— Step 3: Calculate the polynomials of order i ——} for to do Calculate using Equation (17). end for {—— Step 4: Obtain the orthogonal matrix Q using the Schwarz-Rutishauser ——} For n to L do for to do end for end for end for {— —Step 5: Get the features of the input signal using Fractional Laguerre moments ——} Apply fractional Laguerre moments ) using Equation (1). {—— Step 6: return the reconstructed signal ——} Apply the inverse of fractional Laguerre moments to get the reconstructed signal using Equation (2). |
6. Experiments and Discussion
- Relative error (RelErr (%))
- Mean Squared Error (MSE)
- Peak Signal-to-Noise Ratio ()
Results
7. Discussion
8. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Signal | FrGLMs | Proposed Algorithm | ||||
---|---|---|---|---|---|---|
PSNR | MSE | RelErr (%) | PSNR | MSE | RelErr (%) | |
Rec. 101 | 84.61 | 0.23005 | 0.57 | 141.05 | 0.00992 | 0.025 |
Rec. 108 | 70.06 | 0.967 | 2.398 | 119.92 | 0.01496 | 0.037 |
Rec. 115 | 110.88 | 0.037 | 0.092 | 155.46 | 0.00328 | 0.008 |
Rec. 209 | 66.65 | 0.83865 | 2.079 | 135.82 | 0.00728 | 0.018 |
Rec. 214 | 80.83 | 0.60155 | 1.492 | 139.8 | 0.0304 | 0.075 |
Rec. 219 | 112.49 | 0.05465 | 0.136 | 163.2 | 0.00808 | 0.02 |
Rec. 230 | 78.05 | 0.722 | 1.79 | 151.41 | 0.00456 | 0.011 |
Rec. 234 | 74.11 | 0.49475 | 1.227 | 139.05 | 0.00936 | 0.023 |
Average | 89.21 | 0.4932 | 1.223 | 143.21 | 0.01096 | 0.027 |
Signal | FrGLMs—GSM | FrGLMs—HM | FrGLMs—GRM | Proposed Algorithm | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
PSNR | MSE | RelErr (%) | PSNR | MSE | RelErr (%) | PSNR | MSE | RelErr (%) | PSNR | MSE | RelErr (%) | |
Rec. 101 | 109.60 | 0.0359 | 0.089 | 128.22 | 0.01743 | 0.043 | 111.91 | 0.02548 | 0.063 | 141.05 | 0.00992 | 0.025 |
Rec. 108 | 93.022 | 0.2066 | 0.512 | 108.39 | 0.1064 | 0.264 | 88.38 | 0.2723 | 0.675 | 119.92 | 0.01496 | 0.037 |
Rec. 115 | 124.20 | 0.0203 | 0.050 | 139.72 | 0.01358 | 0.034 | 118.55 | 0.029792 | 0.074 | 155.46 | 0.00328 | 0.008 |
Rec. 209 | 109.06 | 0.0210 | 0.052 | 120.78 | 0.01967 | 0.049 | 104.73 | 0.029792 | 0.074 | 135.82 | 0.00728 | 0.018 |
Rec. 214 | 112.64 | 0.0508 | 0.126 | 124.86 | 0.04214 | 0.104 | 109.09 | 0.05985 | 0.148 | 139.80 | 0.0304 | 0.075 |
Rec. 219 | 129.54 | 0.0195 | 0.048 | 144.22 | 0.01491 | 0.037 | 128.10 | 0.02044 | 0.051 | 163.20 | 0.0080 | 0.020 |
Rec. 230 | 123.72 | 0.0142 | 0.035 | 135.56 | 0.01351 | 0.033 | 120.46 | 0.01631 | 0.040 | 151.41 | 0.00456 | 0.011 |
Rec. 234 | 112.09 | 0.0219 | 0.054 | 125.26 | 0.01652 | 0.041 | 107.287 | 0.02947 | 0.073 | 139.05 | 0.00936 | 0.023 |
Average | 114.23 | 0.0487 | 0.121 | 128.37 | 0.03052 | 0.076 | 111.06 | 0.06041 | 0.150 | 143.21 | 0.01096 | 0.027 |
Signal | Order | FrGLMs—HM | Proposed Algorithm | ||
---|---|---|---|---|---|
PSNR | MSE | PSNR | MSE | ||
Rec. 101 | 50 | 85.104 | 0.8541 | 88.104 | 0.3479 |
100 | 90.658 | 0.3140 | 93.487 | 0.2011 | |
200 | 110.847 | 0.0220 | 119.639 | 0.0194 | |
300 | 116.014 | 0.0200 | 132.541 | 0.0148 | |
400 | 121.583 | 0.1984 | 137.965 | 0.0117 | |
500 | 128.22 | 0.01743 | 141.05 | 0.0099 | |
Rec. 219 | 50 | 89.417 | 0.3851 | 105.487 | 0.1961 |
100 | 101.541 | 0.2604 | 116.541 | 0.1358 | |
200 | 114.981 | 0.0833 | 129.574 | 0.0504 | |
300 | 125.635 | 0.0293 | 145.654 | 0.0117 | |
400 | 136.992 | 0.0199 | 157.541 | 0.0098 | |
500 | 144.22 | 0.0149 | 163.20 | 0.0080 |
Techniques | MSE | PSNR |
---|---|---|
Charlier Moment—GSOP [8] | 0.883 | 95.741 |
Krawtchouk—Householder [18] | 0.0771 | 105.015 |
Meixner- MGS [20] | 0.0948 | 85.654 |
Tchebichef–Householder [18] | 0.0436 | 107.085 |
Hahn Moment Invariants (HMIs) [36] | 0.0805 | 97.548 |
Proposed algorithm | 0.0109 | 143.21 |
Signal | Order | Tchebichef–Householder [18] | Krawtchouk—Householder [18] | Proposed Algorithm | |||
---|---|---|---|---|---|---|---|
PSNR | MSE | PSNR | MSE | PSNR | MSE | ||
Rec. 101 | 50 | 75.232 | 0.949 | 73.048 | 1.2201 | 88.104 | 0.3479 |
100 | 80.335 | 0.5273 | 77.213 | 0.7554 | 93.487 | 0.2011 | |
200 | 106.854 | 0.0249 | 104.067 | 0.0343 | 119.639 | 0.0194 | |
300 | 122.548 | 0.0201 | 118.474 | 0.03 | 132.541 | 0.0148 | |
400 | 129.198 | 0.0197 | 125.985 | 0.0284 | 137.965 | 0.0117 | |
500 | 132.017 | 0.0158 | 128.811 | 0.0203 | 141.05 | 0.0099 |
Elapsed Reconstruction Time (s) | ||
---|---|---|
Rec. 101 | Rec. 219 | |
FrGLMs—HM | 1.5 | 1.7 |
Proposed algorithm | 0.7 | 0.9 |
Efficiency Gain | 0.8 | 0.8 |
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Aldakheel, E.A.; Khafaga, D.S.; Fathi, I.S.; Hosny, K.M.; Hassan, G. Efficient Analysis of Large-Size Bio-Signals Based on Orthogonal Generalized Laguerre Moments of Fractional Orders and Schwarz–Rutishauser Algorithm. Fractal Fract. 2023, 7, 826. https://doi.org/10.3390/fractalfract7110826
Aldakheel EA, Khafaga DS, Fathi IS, Hosny KM, Hassan G. Efficient Analysis of Large-Size Bio-Signals Based on Orthogonal Generalized Laguerre Moments of Fractional Orders and Schwarz–Rutishauser Algorithm. Fractal and Fractional. 2023; 7(11):826. https://doi.org/10.3390/fractalfract7110826
Chicago/Turabian StyleAldakheel, Eman Abdullah, Doaa Sami Khafaga, Islam S. Fathi, Khalid M. Hosny, and Gaber Hassan. 2023. "Efficient Analysis of Large-Size Bio-Signals Based on Orthogonal Generalized Laguerre Moments of Fractional Orders and Schwarz–Rutishauser Algorithm" Fractal and Fractional 7, no. 11: 826. https://doi.org/10.3390/fractalfract7110826
APA StyleAldakheel, E. A., Khafaga, D. S., Fathi, I. S., Hosny, K. M., & Hassan, G. (2023). Efficient Analysis of Large-Size Bio-Signals Based on Orthogonal Generalized Laguerre Moments of Fractional Orders and Schwarz–Rutishauser Algorithm. Fractal and Fractional, 7(11), 826. https://doi.org/10.3390/fractalfract7110826