Author Contributions
Conceptualization, H.C.; methodology, X.Z. and H.C.; software, X.Z. and H.C.; validation, X.Z.; formal analysis, X.Z.; investigation, X.Z.; resources, Z.C.; data curation, X.Z.; writing—original draft preparation, X.Z. and H.C.; writing—review and editing, Z.C., S.W. and Z.O.K.; visualization, X.Z.; supervision, Z.C.; project administration, X.Z.; funding acquisition, Z.C. All authors have read and agreed to the published version of the manuscript.
Figure 1.
U-Net edge detection network.
Figure 1.
U-Net edge detection network.
Figure 2.
Convolution block stacking edge detection network.
Figure 2.
Convolution block stacking edge detection network.
Figure 3.
Residual block [
51]. (
a) Conventional residual block. (
b) Bottleneck residual block. The numbers in the blue box present filter size (e.g., 3 × 3) and channel (e.g., 32). And d presents the dimension of the input.
Figure 3.
Residual block [
51]. (
a) Conventional residual block. (
b) Bottleneck residual block. The numbers in the blue box present filter size (e.g., 3 × 3) and channel (e.g., 32). And d presents the dimension of the input.
Figure 4.
The random variation process of the model in the subsurface half space.
Figure 4.
The random variation process of the model in the subsurface half space.
Figure 5.
The perspective view of model. (a) Single block model. (b) Combined block model.
Figure 5.
The perspective view of model. (a) Single block model. (b) Combined block model.
Figure 6.
An Example of dataset. (a) Input data (magnetic anomaly). (b) Label data (horizontal projection boundary).
Figure 6.
An Example of dataset. (a) Input data (magnetic anomaly). (b) Label data (horizontal projection boundary).
Figure 7.
The flowchart of training process.
Figure 7.
The flowchart of training process.
Figure 8.
Curve of loss function varying with epoch.
Figure 8.
Curve of loss function varying with epoch.
Figure 9.
The perspective view of the double combined model.
Figure 9.
The perspective view of the double combined model.
Figure 10.
Inclined magnetization anomaly.
Figure 10.
Inclined magnetization anomaly.
Figure 11.
Edge detection results of the double combined model. (a) Ground truth. The yellow boxes present horizontal projection boundaries of the models, while the dark blue pixels present non-boundaries. (b) Analytic signal method. (c) Tilt angle method. (d) Theta map method. (e) Convolution block stacking EDN. (f) U-Net EDN. (g) ResNet-50 EDN. (h) ResNet-34 EDN.
Figure 11.
Edge detection results of the double combined model. (a) Ground truth. The yellow boxes present horizontal projection boundaries of the models, while the dark blue pixels present non-boundaries. (b) Analytic signal method. (c) Tilt angle method. (d) Theta map method. (e) Convolution block stacking EDN. (f) U-Net EDN. (g) ResNet-50 EDN. (h) ResNet-34 EDN.
Figure 12.
The perspective view of the quadruple combined model.
Figure 12.
The perspective view of the quadruple combined model.
Figure 13.
Complex magnetization anomaly.
Figure 13.
Complex magnetization anomaly.
Figure 14.
Edge detection results of the quadruple combined model. (a) Ground truth. The yellow boxes present horizontal projection boundaries of the models, while the dark blue pixels present non-boundaries. (b) Analytic signal method. (c) Tilt angle method. (d) Theta map method. (e) Convolution block stacking EDN. (f) U-Net EDN. (g) ResNet-50 EDN. (h) ResNet-34 EDN.
Figure 14.
Edge detection results of the quadruple combined model. (a) Ground truth. The yellow boxes present horizontal projection boundaries of the models, while the dark blue pixels present non-boundaries. (b) Analytic signal method. (c) Tilt angle method. (d) Theta map method. (e) Convolution block stacking EDN. (f) U-Net EDN. (g) ResNet-50 EDN. (h) ResNet-34 EDN.
Figure 15.
The perspective view of the overlap model.
Figure 15.
The perspective view of the overlap model.
Figure 16.
The magnetic anomalies, horizontal projection boundary and edge detection results of the overlap model under magnetic inclination and declination of 90° and 0°. (a) Magnetization anomaly. (b) Magnetization anomaly with 5% Gaussian noise. (c) Ground truth. The yellow boxes present horizontal projection boundaries of the models, while the dark blue pixels present non-boundaries. (d) Edge detection results of (a). (e) Edge detection results of (b).
Figure 16.
The magnetic anomalies, horizontal projection boundary and edge detection results of the overlap model under magnetic inclination and declination of 90° and 0°. (a) Magnetization anomaly. (b) Magnetization anomaly with 5% Gaussian noise. (c) Ground truth. The yellow boxes present horizontal projection boundaries of the models, while the dark blue pixels present non-boundaries. (d) Edge detection results of (a). (e) Edge detection results of (b).
Figure 17.
The magnetic anomalies, horizontal projection boundary and edge detection results of the overlap model under magnetic inclination and declination of 60° and 45°. (a) Magnetization anomaly. (b) Magnetization anomaly with 5% Gaussian noise. (c) Ground truth of horizontal projection boundary. (d) Edge detection results of (a). (e) Edge detection results of (b).
Figure 17.
The magnetic anomalies, horizontal projection boundary and edge detection results of the overlap model under magnetic inclination and declination of 60° and 45°. (a) Magnetization anomaly. (b) Magnetization anomaly with 5% Gaussian noise. (c) Ground truth of horizontal projection boundary. (d) Edge detection results of (a). (e) Edge detection results of (b).
Figure 18.
The perspective view of the sphere model.
Figure 18.
The perspective view of the sphere model.
Figure 19.
The magnetic anomalies, horizontal projection boundary and edge detection results of sphere model. (a) Magnetization anomaly. (b) Magnetization anomaly with 5% Gaussian noise. (c) Ground truth of horizontal projection boundary. (d) Edge detection results of (a). (e) Edge detection results of (b).
Figure 19.
The magnetic anomalies, horizontal projection boundary and edge detection results of sphere model. (a) Magnetization anomaly. (b) Magnetization anomaly with 5% Gaussian noise. (c) Ground truth of horizontal projection boundary. (d) Edge detection results of (a). (e) Edge detection results of (b).
Figure 20.
Edge detection results of sphere model after fine-tuning the ResNet-34 EDN. (
a) Edge detection results of
Figure 19a. (
b) Edge detection results of
Figure 19b.
Figure 20.
Edge detection results of sphere model after fine-tuning the ResNet-34 EDN. (
a) Edge detection results of
Figure 19a. (
b) Edge detection results of
Figure 19b.
Figure 21.
Distribution map of igneous rocks in the northern South China Sea. The smaller black box represents the range of survey area.
Figure 21.
Distribution map of igneous rocks in the northern South China Sea. The smaller black box represents the range of survey area.
Figure 22.
Residual magnetic anomaly of survey area.
Figure 22.
Residual magnetic anomaly of survey area.
Figure 23.
Identified results of residual magnetic anomaly. (a) Tilt angle method. (b) Theta map method. (c) ResNet-34 EDN. Pixel values represent the probability of boundaries. (d) ResNet-34 EDN (after fine tuning). The white line represents the boundary of igneous rocks drawn by predecessors.
Figure 23.
Identified results of residual magnetic anomaly. (a) Tilt angle method. (b) Theta map method. (c) ResNet-34 EDN. Pixel values represent the probability of boundaries. (d) ResNet-34 EDN (after fine tuning). The white line represents the boundary of igneous rocks drawn by predecessors.
Table 1.
Establishment standard of mesh, grid and model.
Table 1.
Establishment standard of mesh, grid and model.
Parameter | Value |
---|
X | Y | Z |
---|
Mesh number of subsurface | 64 | 64 | 32 |
Mesh size of subsurface (m) | 10 | 10 | 10 |
Grid number of observation | 64 | 64 | / |
Coordinate of model center point (m) | 40–600 | 40–600 | 30–125 |
Model extension length (m) | 40–450 | 40–450 | 80–200 |
Table 2.
Parameter of training networks.
Table 2.
Parameter of training networks.
| U-Net EDN | Convolution Block Stacking EDN | ResNet-34 EDN | ResNet-50 EDN |
---|
Training set | 17,000 | 17,000 | 17,000 | 17,000 |
Test set | 3000 | 3000 | 3000 | 3000 |
Learning rate | 0.0001 | 0.0001 | 0.0001 | 0.0001 |
Optimizer | Adam | Adam | Adam | Adam |
Batch size | 32 | 32 | 32 | 32 |
Epoch | 100 | 100 | 100 | 100 |
Loss function | MSE | MSE | MSE | MSE |
Table 3.
Binary confusion matrix.
Table 3.
Binary confusion matrix.
True Value\Predict Value | Positive | Negative |
---|
Positive | TP | FN |
Negative | FP | TN |
Table 4.
The parameters of the double combined models.
Table 4.
The parameters of the double combined models.
Number | 1 | 2 |
---|
Coordinate of model center point in X, Y, Z direction (m) | (200, 450, 100) | (420, 200, 150) |
Model extension length in X, Y and Z direction (m) | (160, 160, 100) | (160, 160, 100) |
Magnetic susceptibility (SI) | 0.2 | 0.2 |
Table 5.
Average evaluation indicators of the double combined model in complex situations.
Table 5.
Average evaluation indicators of the double combined model in complex situations.
| Accuracy | Precision | Recall | F1 Score |
---|
Convolution block stacking EDN | 0.9734 | 0.8939 | 0.4917 | 0.6344 |
U-Net EDN | 0.9849 | 0.7499 | 0.7250 | 0.7372 |
ResNet-50 EDN | 0.9873 | 0.8544 | 0.7543 | 0.8012 |
ResNet-34 EDN | 0.9924 | 0.9376 | 0.8312 | 0.8811 |
Table 6.
The parameters of the quadruple combined model.
Table 6.
The parameters of the quadruple combined model.
Number | Coordinate of Model Center Point (m) | Model Extension Length (m) | Magnetic Susceptibility (SI) |
---|
1 | (200, 200, 150) | (200, 200, 100) | 0.4 |
2 | (440, 220, 120) | (120, 200, 100) | 0.4 |
3 | (250, 470, 100) | (200, 100, 100) | 0.3 |
4 | (520, 470, 60) | (100, 100, 100) | 0.2 |
Table 7.
Average evaluation indicators of the quadruple combined model.
Table 7.
Average evaluation indicators of the quadruple combined model.
| Accuracy | Precision | Recall | F1 Score |
---|
Convolution block stacking EDN | 0.9519 | 0.5648 | 0.59210 | 0.5781 |
U-Net EDN | 0.9585 | 0.6495 | 0.5526 | 0.5971 |
ResNet-50 EDN | 0.9599 | 0.6495 | 0.6096 | 0.6289 |
ResNet-34 EDN | 0.9751 | 0.9072 | 0.6769 | 0.7752 |
Table 8.
The parameters of the overlap model.
Table 8.
The parameters of the overlap model.
Number | Coordinate of Model Center Point (m) | Model Extension Length (m) | Magnetic Susceptibility (SI) |
---|
1 | (250, 250, 50) | (100, 100, 50) | 0.3 |
2 | (320, 320, 125) | (200, 200, 100) | 0.3 |
Table 9.
The parameters of the sphere model.
Table 9.
The parameters of the sphere model.
Number | Coordinate of Model Center Point (m) | The Radius of The Sphere (m) | Magnetic Susceptibility (SI) |
---|
1 | (200, 200, 100) | 50 | 0.4 |
2 | (400, 400, 100) | 50 | 0.4 |