| Literature DB >> 28640181 |
Xin Zhang1, Jintian Cui2,3, Weisheng Wang4, Chao Lin5.
Abstract
To address the problem of image texture feature extraction, a direction measure statistic that is based on the directionality of image texture is constructed, and a new method of texture feature extraction, which is based on the direction measure and a gray level co-occurrence matrix (GLCM) fusion algorithm, is proposed in this paper. This method applies the GLCM to extract the texture feature value of an image and integrates the weight factor that is introduced by the direction measure to obtain the final texture feature of an image. A set of classification experiments for the high-resolution remote sensing images were performed by using support vector machine (SVM) classifier with the direction measure and gray level co-occurrence matrix fusion algorithm. Both qualitative and quantitative approaches were applied to assess the classification results. The experimental results demonstrated that texture feature extraction based on the fusion algorithm achieved a better image recognition, and the accuracy of classification based on this method has been significantly improved.Entities:
Keywords: direction measure; gray level co-occurrence matrix; image classification; texture feature extraction
Year: 2017 PMID: 28640181 PMCID: PMC5539706 DOI: 10.3390/s17071474
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Two-order statistical parameters.
| Method | Equation | Description |
|---|---|---|
| Angular second moment (ASM) | ||
| Contrast (CON) | ||
| Correlation (COR) | ||
| Entropy (ENT) |
Figure 1Direction measure.
Figure 2Support vector machine (SVM) classification results of GaoFen-2 data.
SVM classification accuracy of GaoFen-2 data.
| Class | Method One | Method Two |
|---|---|---|
| Water | 0.8681 | 0.9535 |
| Forest land | 0.8543 | 0.8665 |
| Arable land | 0.8374 | 0.9976 |
| Residential land | 0.7016 | 0.7564 |
| Roads | 0.7113 | 0.6788 |
| Bare land | 0.5974 | 0.6399 |
| OA/% | 86.92 | 92.43 |
| Kappa coefficient | 0.83 | 0.87 |
The accuracy of each class in the table is the conditional Kappa coefficient.
Figure 3SVM classification results of QuickBird data.
SVM classification accuracy of QuickBird data.
| Class | Method One | Method Two |
|---|---|---|
| Water | 0.8425 | 0.9792 |
| Forest land | 0.8517 | 0.8595 |
| Arable land | 0.8526 | 0.9842 |
| Residential land | 0.6937 | 0.7611 |
| Roads | 0.7012 | 0.7057 |
| Bare land | 0.6843 | 0.7368 |
| OA/% | 85.70 | 93.26 |
| Kappa coefficient | 0.82 | 0.89 |
The accuracy of each class in the table is the conditional Kappa coefficient.
Figure 4SVM classification results of GeoEye-1 data.
SVM classification accuracy of GeoEye-1 data.
| Class | Method One | Method Two |
|---|---|---|
| Water | 0.8714 | 0.9946 |
| Forest land | 0.8623 | 0.8705 |
| Arable land | 0.8435 | 0.9860 |
| Residential land | 0.7123 | 0.7768 |
| Roads | 0.6930 | 0.6964 |
| Bare land | 0.6551 | 0.6646 |
| OA/% | 88.51 | 96.75 |
| Kappa coefficient | 0.84 | 0.93 |
The accuracy of each class in the table is the conditional Kappa coefficient.
Figure 5Different texture types on a remote sensing image ((a)-arable land; (b)-forest land).
Direction measure and weight factor of different texture images.
| Arable Land | Forest Land | |||||||
|---|---|---|---|---|---|---|---|---|
| 0° | 45° | 90° | 135° | 0° | 45° | 90° | 135° | |
| Direction measure | 133 | 94 | 12 | 67 | 64 | 75 | 61 | 70 |
| Weight factor | 0.017 | 0.032 | 0.864 | 0.087 | 0.257 | 0.208 | 0.311 | 0.224 |
Method one for texture feature extraction.
| Class | ASM | CON | COR | ENT |
|---|---|---|---|---|
| Arable land | 0.0447 | 3.8586 | 0.0481 | 4.2301 |
| 0.0411 | 3.0875 | 0.0389 | 4.5788 | |
| 0.0439 | 3.1024 | 0.0431 | 4.4029 | |
| 0.0392 | 2.9304 | 0.0379 | 4.5967 | |
| Forest land | 0.2670 | 2.6334 | 0.1446 | 2.4026 |
| 0.2040 | 2.2045 | 0.1384 | 2.4786 | |
| 0.2134 | 2.1342 | 0.1265 | 2.7665 | |
| 0.2587 | 2.4563 | 0.1323 | 2.5876 |
Method two for texture feature extraction.
| Class | ASM | CON | COR | ENT |
|---|---|---|---|---|
| Arable land | 0.0556 | 6.2471 | 0.0470 | 5.4875 |
| 0.0549 | 6.0083 | 0.0413 | 6.0032 | |
| 0.0551 | 6.1267 | 0.0434 | 5.8976 | |
| 0.5127 | 5.9872 | 0.0405 | 6.1233 | |
| Forest land | 0.3456 | 1.2545 | 0.2854 | 2.2321 |
| 0.3208 | 1.2074 | 0.2475 | 2.2482 | |
| 0.3306 | 0.1944 | 0.2409 | 2.4874 | |
| 0.3418 | 1.2475 | 0.2463 | 2.3677 |
Accuracy of remote sensing image classification with or without distinct texture.
| Method | Forest Land | Arable Land |
|---|---|---|
| Method one | 90.57 | 91.30 |
| Method two | 91.45 | 95.46 |