Abandoned Farmland Location in Areas Affected by Rapid Urbanization Using Textural Characterization of High Resolution Aerial Imagery
Abstract
:1. Introduction
2. Data and Methodology
2.1. Research Approach
2.2. Study Area and Data
2.3. Abandoned Farmland Extraction Algorithm
- Local binary pattern (LBP): LBP is a local texture descriptor capable of characterizing small texture regions [23]. LBP is a simple, yet very efficient texture operator that thresholds the neighboring pixels based on the value of the current pixel [24]. Due to its discriminative power, the LBP texture operator has become a popular approach in several applications, highlighting textural analysis procedures [25]. Figure 4 shows the procedure for computing LBP values. First, each central pixel is compared with its eight neighbors. This 3 × 3 neighborhood must be thresholded by the value of the center pixel; the neighbors having a smaller value than that of the central pixel will have bit 0, and the other neighbors having a value equal to or greater than that of the central pixel will have bit 1. Then these binary values of the pixels in the thresholded neighborhood must be multiplied by the weights given to the corresponding pixels. Finally, the values of the eight pixels will be added to obtain a number for this neighborhood. If we computed the LBP histogram over an entire region, it may be used for describing its texture. In addition, LBP achieves high levels of accuracy in textural characterization processes compared to other texture operators.
- A contrast measure (C): LBP descriptors efficiently capture the local spatial patterns. However, whereas LBP is invariant against any monotonic grey scale transformation, we must combine it with a simple contrast measure C to make it even more powerful. The computation of C is also addressed in Figure 4.
- (1)
- Texture characterization
- (2)
- Hierarchical structure generation
- Homogeneity, denoted by H(x, y, l). Homogeneity ranged from 1 (if the four cells immediately underneath had the same texture) to 0 (in any other case). The setting of H was based on a uniformity test. Thus, the four cells had the same texture if a measure of relative dissimilarity within that region was lower than a certain threshold U, (/ < U). U must be set in such a way as to ensure the detection and differentiation of textures, preventing wherever possible the inclusion of two regions with different textures in the same class. For this reason, it is advisable to choose a value for U as small as possible.
- Texture, denoted by T(x, y, l). The texture of one cell was calculated as the sum of the LBP/C distributions of the four cells immediately underneath if, and only if, the cell was homogeneous. Otherwise, the value of T(x, y, l) was set to a fixed value .
- Parent link, denoted by . If was equal to 1, the values of the parent links of the four cells immediately underneath were set to (x, y). Otherwise, these four parent links were set to a null value.
- The centroid, denoted by . , represents the center of mass of the base region associated with (x, y, l).
- Histogram. Each parent link stored the two-dimensional histogram, which characterized the texture of the image region represented by this node. In order to optimize the storage capacity and to improve the computation time, if a node (located at the l level) represented a region of homogenous texture, all the nodes located at lower levels (until the end of the pyramid) did not store their corresponding histograms, their texture being characterized by the histogram stored in the parent link.
- (3)
- Grow of homogeneous cells
- (4)
- Homogeneous cells fusion
- = null. Therefore, the cell had no parent.
- = null. Therefore, the cell had no parent.
- The cells had a homogeneous texture. = 1 & = 1.
- The cells had the same texture.
- (5)
- Pixel-wise
- (6)
- FLA zones’ extraction
2.4. Evaluation of Segmentation Results
2.5. Evaluation of the Efficiency of Our Approach for Locating Abandoned Land
3. Results
3.1. Mapping Abandoned Farmland Derived From Textural Segmentation of the Aerial Image
3.2. Evaluation of Segmentation Results
3.3. Evaluation of the Efficiency of Our Approach for Locating Abandoned Land
- The number of plots classified as abandoned land by means of the field visit procedure was 37, and the number of plots classified as “other uses” was three. Consequently, by means of this procedure, 92.5% of plots were classified as abandoned land.
- The number of plots classified as abandoned land by means of revision of the LBP/C parameters was 38, and the number of plots classified as “other uses” was two. Consequently, by means of this procedure, 95% of plots were classified as abandoned land.
4. Discussion
5. Conclusions
Funding
Conflicts of Interest
References
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Field visit | |||
---|---|---|---|
Abandoned Land | Other Uses | ||
Revision of LBP/C parameters | Abandoned Land | 36 | 2 |
Other uses | 1 | 1 |
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Ruiz-Lendínez, J.J. Abandoned Farmland Location in Areas Affected by Rapid Urbanization Using Textural Characterization of High Resolution Aerial Imagery. ISPRS Int. J. Geo-Inf. 2020, 9, 191. https://doi.org/10.3390/ijgi9040191
Ruiz-Lendínez JJ. Abandoned Farmland Location in Areas Affected by Rapid Urbanization Using Textural Characterization of High Resolution Aerial Imagery. ISPRS International Journal of Geo-Information. 2020; 9(4):191. https://doi.org/10.3390/ijgi9040191
Chicago/Turabian StyleRuiz-Lendínez, Juan José. 2020. "Abandoned Farmland Location in Areas Affected by Rapid Urbanization Using Textural Characterization of High Resolution Aerial Imagery" ISPRS International Journal of Geo-Information 9, no. 4: 191. https://doi.org/10.3390/ijgi9040191
APA StyleRuiz-Lendínez, J. J. (2020). Abandoned Farmland Location in Areas Affected by Rapid Urbanization Using Textural Characterization of High Resolution Aerial Imagery. ISPRS International Journal of Geo-Information, 9(4), 191. https://doi.org/10.3390/ijgi9040191