| Literature DB >> 27376088 |
Salman Qadri1, Dost Muhammad Khan1, Farooq Ahmad2, Syed Furqan Qadri3, Masroor Ellahi Babar4, Muhammad Shahid1, Muzammil Ul-Rehman1, Abdul Razzaq5, Syed Shah Muhammad6, Muhammad Fahad1, Sarfraz Ahmad6, Muhammad Tariq Pervez4, Nasir Naveed6, Naeem Aslam5, Mutiullah Jamil1, Ejaz Ahmad Rehmani1, Nazir Ahmad1, Naeem Akhtar Khan7.
Abstract
The main objective of this study is to find out the importance of machine vision approach for the classification of five types of land cover data such as bare land, desert rangeland, green pasture, fertile cultivated land, and Sutlej river land. A novel spectra-statistical framework is designed to classify the subjective land cover data types accurately. Multispectral data of these land covers were acquired by using a handheld device named multispectral radiometer in the form of five spectral bands (blue, green, red, near infrared, and shortwave infrared) while texture data were acquired with a digital camera by the transformation of acquired images into 229 texture features for each image. The most discriminant 30 features of each image were obtained by integrating the three statistical features selection techniques such as Fisher, Probability of Error plus Average Correlation, and Mutual Information (F + PA + MI). Selected texture data clustering was verified by nonlinear discriminant analysis while linear discriminant analysis approach was applied for multispectral data. For classification, the texture and multispectral data were deployed to artificial neural network (ANN: n-class). By implementing a cross validation method (80-20), we received an accuracy of 91.332% for texture data and 96.40% for multispectral data, respectively.Entities:
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Year: 2016 PMID: 27376088 PMCID: PMC4916327 DOI: 10.1155/2016/8797438
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Figure 1Geographic location of the study area. The red highlighted left side on the map represents the study area [13].
Figure 2Five land cover images and Luxmeter.
Time and sunlight intensity information.
| Sr. number | Land cover type | Time | Sunshine intensity |
|---|---|---|---|
| (1) | Bare land | 1.00 pm | 34300 Lux |
| (2) | Desert rangeland | 2.00 pm | 34000 Lux |
| (3) | Fertile cultivated land | 1.30 pm | 34500 Lux |
| (4) | Green pasture | 1.30 pm | 35000 Lux |
| (5) | Sutlej river land | 1.00 pm | 34300 Lux |
MSR5 (S. number 566).
| MSR types | Blue | Green | Red | Near infrared | Shortwave infrared |
|---|---|---|---|---|---|
| MSR5 (generic) | 450–520 nm | 520–600 nm | 630–690 nm | 760–930 nm | 1550–1750 nm |
| MSR5 (S. number 566) | 485 nm | 560 nm | 660 nm | 830 nm | 1650 nm |
Figure 3MSR5 data acquiring process for each scan [14].
Figure 4Proposed spectra-statistical design framework for land cover classification.
Feature selection table (F + PA + MI) for ROIs (512 × 512).
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| 11 | PA | Percent .01% |
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NDA architecture for statistical texture dataset.
| Input layers = 5 | 1st hidden layer = 5 | 2nd hidden layer = 2 |
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| Learning rate eta = 0.25 | Back propagation iteration = 200000 | Optimized iteration limit = 70 |
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NDA architecture for multispectral dataset.
| Input layers = 5 | 1st hidden layer = 5 | 2nd hidden layer = 2 |
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| Learning rate eta = 0.20 | Back propagation iteration = 200000 | Optimized iteration limit = 70 |
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Figure 5Implemented ANN classifier model [15].
Statistical texture features data projection table.
| Statistical data analysis | RDA | PCA | LDA | NDA |
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| 1-fold | 92.5% | 92.50% | 97.50% | 99.5% |
| 2-fold | 88.75% | 87.92% | 96.25% | 100% |
| 3-fold | 90% | 89.17% | 98.75% | 99% |
| 4-fold | 88.75% | 87.50% | 96.67% | 100% |
| 5-fold | 90.42% | 90.42% | 99.17% | 99.69% |
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Figure 6Digital photographic features data projection graph.
Figure 7Statistical texture features data clustered results for NDA.
Classification table of statistical texture data using artificial neural network (ANN: n-class).
| Statistical data iteration (80-20) | Training dataset | Training data classification accuracy % | Test dataset | Misclassified data | Test data classification accuracy % |
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| 1-fold | 240 | 100% | 60 | 5/60 | 91.67% |
| 2-fold | 240 | 100% | 60 | 6/60 | 90% |
| 3-fold | 240 | 100% | 60 | 6/60 | 90% |
| 4-fold | 240 | 100% | 60 | 3/60 | 95% |
| 5-fold | 240 | 100% | 60 | 6/60 | 90% |
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Confusion matrix for statistical texture data classification using (ANN: n-class).
| Type | Fertile land | Green pasture | Desert rangeland | Bare land | Sutlej river land | Total |
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| Fertile land | 51 | 1 | 3 | 2 | 3 | 60 |
| Green pasture | 0 | 59 | 1 | 0 | 0 | 60 |
| Desert rangeland | 3 | 4 | 48 | 3 | 2 | 60 |
| Bare land | 1 | 1 | 1 | 57 | 0 | 60 |
| Sutlej river land | 0 | 3 | 1 | 1 | 55 | 60 |
Figure 8Confusion graph for statistical texture test data classification.
Multispectral features data projection table.
| Spectral data analysis (80-20) | RDA | PCA | LDA | NDA |
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| 1-fold | 99% | 97.5% | 99.5% | 100% |
| 2-fold | 99% | 99% | 100% | 99% |
| 3-fold | 98.5% | 98.5% | 100% | 100% |
| 4-fold | 98.5% | 98.5% | 99% | 99% |
| 5-fold | 98.5% | 98.5% | 99% | 99% |
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Figure 9Multispectral feature data projection graph.
Figure 10Multispectral features data clustered result for LDA.
Classification table for multispectral data using artificial neural network (ANN: n-class).
| Multispectral data iteration (80-20) | Training dataset | Training data classification accuracy % | Test dataset | Misclassified data | Test data classification accuracy % |
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| 1-fold | 200 | 100% | 50 | 6/50 | 88% |
| 2-fold | 200 | 100% | 50 | 2/50 | 96% |
| 3-fold | 200 | 100% | 50 | 0/50 | 100% |
| 4-fold | 200 | 100% | 50 | 1/50 | 98% |
| 5-fold | 200 | 100% | 50 | 0/50 | 100% |
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Figure 11Confusion graph for multispectral test data classification.
Confusion matrix for multispectral data classification using (ANN: n-class).
| Type | Fertile land | Green pasture | Desert rangeland | Bare land | Sutlej river land | Total |
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| Fertile land | 47 | 1 | 1 | 1 | 0 | 50 |
| Green pasture | 0 | 50 | 0 | 0 | 0 | 50 |
| Desert rangeland | 0 | 0 | 48 | 2 | 0 | 50 |
| Bare land | 0 | 0 | 2 | 48 | 0 | 50 |
| Sutlej river land | 0 | 0 | 1 | 1 | 48 | 50 |
Figure 12Multispectral and statistical texture data graph.