| Literature DB >> 26091392 |
Lara del Val1, Alberto Izquierdo-Fuente2, Juan J Villacorta3, Mariano Raboso4.
Abstract
Drawing on the results of an acoustic biometric system based on a MSE classifier, a new biometric system has been implemented. This new system preprocesses acoustic images, extracts several parameters and finally classifies them, based on Support Vector Machine (SVM). The preprocessing techniques used are spatial filtering, segmentation-based on a Gaussian Mixture Model (GMM) to separate the person from the background, masking-to reduce the dimensions of images-and binarization-to reduce the size of each image. An analysis of classification error and a study of the sensitivity of the error versus the computational burden of each implemented algorithm are presented. This allows the selection of the most relevant algorithms, according to the benefits required by the system. A significant improvement of the biometric system has been achieved by reducing the classification error, the computational burden and the storage requirements.Entities:
Keywords: acoustic biometric system; acoustic images; preprocessing techniques; support vector machine
Mesh:
Year: 2015 PMID: 26091392 PMCID: PMC4507697 DOI: 10.3390/s150614241
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Hyperplane for binary classification.
Figure 2Classifier training.
Figure 35-fold Cross Validation.
Figure 4Functional description block diagram.
Figure 5Acquisition system block diagram.
Figure 6Acoustic image example.
Number of beams vs. frequency.
| f1 | f2 | f3 | f4 | f5 | f6 | f7 | f8 | f9 |
|---|---|---|---|---|---|---|---|---|
| 13 | 15 | 15 | 17 | 17 | 17 | 19 | 19 | 21 |
Figure 7Preprocessing and parametrization techniques.
Image sizes.
| N × M | f1 | f2 | f3 | f4 | f5 | f6 | f7 | f8 | f9 |
|---|---|---|---|---|---|---|---|---|---|
| 245 × 13 | 245 × 15 | 245 × 15 | 245 × 17 | 245 × 17 | 245 × 17 | 245 × 19 | 245 × 19 | 245 × 21 |
Masked image sizes.
| N × M | f1 | f2 | f3 | f4 | f5 | f6 | f7 | f8 | f9 |
|---|---|---|---|---|---|---|---|---|---|
| 145 × 13 | 145 × 15 | 145 × 15 | 145 × 17 | 145 × 17 | 145 × 17 | 145 × 19 | 145 × 19 | 145 × 21 | |
| 155 × 11 | 155 × 11 | 155 × 11 | 155 × 11 | 155 × 11 | 155 × 11 | 155 × 11 | 155 × 11 | 155 × 11 | |
| 171 × 9 | 171 × 9 | 171 × 9 | 171 × 9 | 171 × 9 | 171 × 9 | 171 × 9 | 171 × 9 | 171 × 9 |
Figure 8Pre-processed images: (a) original; (b) segmented; (c) masked; (d) binarized.
Image sizes using Row-based Image Coding.
| L | f1 | f2 | f3 | f4 | f5 | f6 | f7 | f8 | f9 |
|---|---|---|---|---|---|---|---|---|---|
| 145 | 145 | 145 | 145 | 145 | 145 | 145 | 145 | 145 | |
| 155 | 155 | 155 | 155 | 155 | 155 | 155 | 155 | 155 | |
| 171 | 171 | 171 | 171 | 171 | 171 | 171 | 171 | 171 |
Image sizes using Column-based Image Coding.
| L | f1 | f2 | f3 | f4 | f5 | f6 | f7 | f8 | f9 |
|---|---|---|---|---|---|---|---|---|---|
| 13 | 15 | 15 | 17 | 17 | 17 | 19 | 19 | 121 | |
| 11 | 11 | 11 | 11 | 11 | 11 | 11 | 11 | 11 | |
| 9 | 9 | 9 | 9 | 9 | 9 | 9 | 9 | 9 |
Figure 9Line-based Image Coding.
Figure 10Line-based Image Coding with position.
Figure 11Geometric feature extraction.
Morphological features.
| Id | # Signatures | Gender | Constitution | Height |
|---|---|---|---|---|
| 00 | 500 | male | thin | average |
| 01 | 500 | female | normal | average |
| 02 | 500 | female | normal | small |
| 03 | 500 | male | strong | tall |
| 04 | 500 | male | very strong | tall |
| 05-29 | 125 | male | strong | average |
| 150 | female | thin | average | |
| 150 | male | thin | average | |
| 300 | female | normal | average | |
| 100 | male | very strong | tall | |
| 125 | male | normal | average | |
| 125 | male | strong | tall | |
| 100 | female | normal | small | |
| 125 | female | strong | small | |
| 125 | female | strong | tall | |
| 325 | male | strong | average | |
| 350 | male | thin | small | |
| 400 | female | thin | small | |
Figure 12Experiments.
Classification error rates for raw, preprocessed and binarized acoustic profiles.
| Acoustic Profile | E | σ (Error Rate) |
|---|---|---|
| 0.46% | 0.120 | |
| 0.46% | 0.121 | |
| 0.75% | 0.255 |
Number of parameters per line.
| Line-Based Image Coding | K |
|---|---|
| 1 | |
| 2 |
Classification error rates for line coding based on line length.
| Line Coding | E | σ (Error Rate) |
|---|---|---|
| 1.93% | 0.498 | |
| 1.97% | 0.546 | |
| 1.43% | 0.390 |
Classification error rates for line coding based on length and position.
| Line Coding | E | σ(Error Rate) |
|---|---|---|
| 1.47% | 0.407 | |
| 1.86% | 0.391 | |
| 0.46% | 0.061 |
Classification error rates using geometric features.
| Geometric Parameters | E | σ(Error Rate) |
|---|---|---|
| 11.07% | 0.297 | |
| 12.04% | 0.310 | |
| 15.04% | 0.325 | |
| 6.86% | 0.430 |
Figure 13Classification error rates.
Figure 14Computational burden.
Classification error and computational burden sensitivities.
| Se | 1/Sb | |
|---|---|---|
| 1.00 | 1.00 | |
| 1.00 | 2.13 | |
| 1.62 | 7.85 | |
| 4.17 | 109.72 | |
| 4.25 | 1297.28 | |
| 3.09 | 95.02 | |
| 3.17 | 51.43 | |
| 4.02 | 599.31 | |
| 1.00 | 43.90 | |
| 23.94 | 5581.96 | |
| 26.02 | 2883.10 | |
| 32.51 | 5242.42 | |
| 14.83 | 1382.36 |
Figure 15Error increment vs. burden reduction.