Deep Learning-Based Segmentation and Spatial Distribution Characteristics of Coal Matrix Pores in FIB-SEM Images
Abstract
1. Introduction
2. Testing Methods and Model Construction
2.1. Sample Preparation and Testing
2.2. MDFA-Deeplabv3+ Model Construction
3. MDFA-Deeplabv3+ Coal Pore Segmentation
3.1. Dataset Construction
3.2. Experimental Environment
3.3. Evaluation Metrics
3.4. Training Parameter Settings
3.5. Analysis of Experimental Results
3.6. Analysis of Ablation Experiment
4. 3D Reconstruction and Characterisation of Coal Pores
4.1. 3D Reconstruction Results
4.2. Pore Structure Characteristics
4.3. Pore Connectivity and Topological Characteristics
4.4. Effect of Segmentation Detection Rate on Pore Topology
5. Conclusions
6. Uncertainty Analysis
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Sample | Moisture Mad/% | Ash Content Ad/% | Volatile Matter Vdaf/% | Fixed Carbon FCad/% |
|---|---|---|---|---|
| 1 | 3.77 | 10.90 | 32.14 | 58.18 |
| 2 | 1.15 | 16.17 | 24.16 | 62.85 |
| Name | Configuration |
|---|---|
| CPU | Intel(R) Core(TM) i7-12700H |
| GPU | NVIDIA A100 |
| RAM | 32 G |
| Operating System | Windows 10 64-bit |
| CUDA | 11.8 |
| Random Seed | MIoU/% | Dice/% | PA/% | Precision/% | Recall/% |
|---|---|---|---|---|---|
| 2024 | 81.47 | 89.79 | 98.50 | 89.36 | 90.22 |
| 2025 | 81.27 | 89.67 | 98.48 | 89.45 | 89.89 |
| 2026 | 81.27 | 89.67 | 98.48 | 89.50 | 89.84 |
| Mean ± Std | 81.34 ± 0.12 | 89.71 ± 0.07 | 98.49 ± 0.01 | 89.44 ± 0.07 | 89.98 ± 0.21 |
| Model | IoU/% | Dice/% | PA/% | Precision/% | Recall/% |
|---|---|---|---|---|---|
| DeepLabv3+ | 73.44 ± 0.76 | 84.69 ± 0.54 | 98.14 ± 0.11 | 88.36 ± 0.62 | 81.31 ± 0.92 |
| SE+DeepLabv3+ | 77.18 ± 0.81 | 87.12 ± 0.58 | 98.41 ± 0.10 | 89.35 ± 0.55 | 85.00 ± 1.05 |
| MDFA+DeepLabv3+ | 79.74 ± 0.97 | 88.72 ± 0.60 | 98.59 ± 0.11 | 89.72 ± 0.48 | 87.75 ± 1.27 |
| Model | IoU/% | Dice/% | PA/% | Precision/% | Recall/% |
|---|---|---|---|---|---|
| U-Net | 75.21 ± 0.85 | 85.85 ± 0.64 | 98.26 ± 0.12 | 88.57 ± 0.78 | 83.29 ± 0.95 |
| PSPNet | 54.01 ± 1.45 | 70.14 ± 1.15 | 97.59 ± 0.28 | 79.52 ± 1.30 | 62.74 ± 1.65 |
| Unet++ | 76.04 ± 0.72 | 86.39 ± 0.51 | 98.07 ± 0.09 | 89.03 ± 0.65 | 83.90 ± 0.82 |
| MDFA+DeepLabv3+ | 79.74 ± 0.97 | 88.72 ± 0.60 | 98.59 ± 0.11 | 89.72 ± 0.48 | 87.75 ± 1.27 |
| Pore Equivalent Radius Intervals/nm | Pore Quantity Proportion/% | Pore Surface Area Proportion/% | Pore Volume Proportion/% |
|---|---|---|---|
| 5–100 | 86.0425 | 5.2682 | 0.8183 |
| 100–200 | 6.8209 | 5.2249 | 1.6312 |
| 200–300 | 2.4301 | 6.3783 | 2.9185 |
| 300–400 | 1.3518 | 7.8261 | 4.6958 |
| 400–500 | 1.0784 | 10.0334 | 7.6678 |
| 500–600 | 0.6835 | 9.6285 | 8.6909 |
| 600–700 | 0.4708 | 9.0809 | 10.2492 |
| 700–800 | 0.6075 | 17.9882 | 20.6146 |
| 800–900 | 0.1975 | 7.8228 | 9.4329 |
| 900–1000 | 0.1215 | 5.6105 | 8.2203 |
| >1000 | 0.1975 | 15.1392 | 25.0594 |
| Pore Equivalent Radius Intervals/nm | Pore Quantity Proportion/% | Pore Surface Area Proportion/% | Pore Volume Proportion/% |
|---|---|---|---|
| 5–100 | 89.1799 | 26.3322 | 12.0061 |
| 100–200 | 9.4044 | 27.2408 | 22.1831 |
| 200–300 | 0.9918 | 11.8939 | 13.1860 |
| 300–400 | 0.1082 | 7.3504 | 9.0703 |
| 400–500 | 0.1082 | 6.9889 | 8.9889 |
| 500–600 | 0.0316 | 3.3529 | 4.5122 |
| 600–700 | 0.0045 | 1.2717 | 1.3040 |
| 700–800 | 0.0090 | 2.7333 | 3.6246 |
| 800–900 | 0.0090 | 2.4304 | 4.7839 |
| 900–1000 | 0.0045 | 1.5055 | 3.4196 |
| >1000 | 0.0090 | 8.9001 | 16.9212 |
| Sample | Dice | Mean Value | Population Standard Deviation | Coefficient of Variation/% |
|---|---|---|---|---|
| 1 | high | 100.06 | 22.14 | 22.1 |
| low | 24.70 | 6.13 | 24.8 | |
| 2 | high | 180.94 | 25.57 | 14.1 |
| low | 53.04 | 17.89 | 33.7 |
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Wang, C.; Chang, Z.; Zhao, L.; Xu, D.; Qiao, J.; Liu, J.; Shi, Y. Deep Learning-Based Segmentation and Spatial Distribution Characteristics of Coal Matrix Pores in FIB-SEM Images. Processes 2026, 14, 1888. https://doi.org/10.3390/pr14121888
Wang C, Chang Z, Zhao L, Xu D, Qiao J, Liu J, Shi Y. Deep Learning-Based Segmentation and Spatial Distribution Characteristics of Coal Matrix Pores in FIB-SEM Images. Processes. 2026; 14(12):1888. https://doi.org/10.3390/pr14121888
Chicago/Turabian StyleWang, Cuixia, Zerun Chang, Lanhua Zhao, Dongliang Xu, Jingdan Qiao, Jikun Liu, and Yu Shi. 2026. "Deep Learning-Based Segmentation and Spatial Distribution Characteristics of Coal Matrix Pores in FIB-SEM Images" Processes 14, no. 12: 1888. https://doi.org/10.3390/pr14121888
APA StyleWang, C., Chang, Z., Zhao, L., Xu, D., Qiao, J., Liu, J., & Shi, Y. (2026). Deep Learning-Based Segmentation and Spatial Distribution Characteristics of Coal Matrix Pores in FIB-SEM Images. Processes, 14(12), 1888. https://doi.org/10.3390/pr14121888
