CR-Mask RCNN: An Improved Mask RCNN Method for Airport Runway Detection and Segmentation in Remote Sensing Images
Abstract
:1. Introduction
- (1)
- A method for end-to-end airport runway detection and segmentation in remote sensing images based on an improved Mask RCNN is proposed to enhance the capability of feature extraction for airport runways.
- (2)
- To address the detection of airport runways, which are long, narrow, and rotational targets with variable orientations, this study uses RRPN to replace the traditional RPN, in order to avoid the interference of irrelevant background information caused by horizontal bounding boxes. Meanwhile, when extracting the region of interest (ROI), the RROI Align layer is used to replace the ROI Align layer, ensuring effective feature alignment under rotation and maintaining the spatial consistency of airport runways on the feature map, thus accurately cropping the features that match the target region. This method significantly improves the accuracy of the detection and segmentation of airport runways; in particular, it shows more pronounced effects in addressing the issue of false negatives of airport runways in large-scale images.
- (3)
- An attention mechanism is incorporated into the backbone feature extraction network, which enhances the response of the feature extractor to airport runway targets and suppresses background noise. This improvement further increases the accuracy of airport runway detection, significantly enhances the precision of airport runway segmentation, and reduces the occurrence of false positives and false negatives in airport runway detection. In particular, when handling multiple intersecting airport runways in a single remote sensing image, it effectively reduces the probability of false positives and false negatives.
2. Methods
2.1. Base Network Model
2.2. Improvement Strategy of Mask RCNN Based on Airport Runways
2.2.1. Replace the RPN Network with the RRPN Network
- (1)
- The Intersection Over Union (IOU) ratio between the bounding box and the sample true label is greater than 0.7.
- (2)
- The angle difference between the bounding box and the ground truth label is less than 15°.
2.2.2. Optimizing the ROI Align Layer
2.2.3. Integrate the Attention Mechanism into the Backbone Feature Extraction Network
3. Experiments and Analyses
3.1. Airport Runway Experimental Dataset
3.2. Evaluation Indicators
3.3. Experimental Environment and Setup
- (1)
- When the IOU with the bounding box that has the highest confidence level is greater than 0.5.
- (2)
- When the IOU between two bounding boxes is greater than 0.3 and less than 0.5 while their angle difference is less than 15°.
3.4. Analysis of Experimental Results
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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IOU Calculation Method |
---|
- Input all rotated rectangular boxes R1~Rj; |
- Select two rectangular boxes Ri, Rj; |
- Put all the points (coordinates) that intersect both into the empty set H, which is then {e, f, g, h}; |
- Then put the vertex coordinates of Ri in Rj into H, which is then {e, f, g, h, a}; |
- The coordinates of the vertices of jR in iR are then put into H, which is then {e, f, g, h, a, D}; |
- Sort the set H in counterclockwise order as {a, h, D, g, f, e}; |
- Calculate the overlapping area Sc in H using triangulation; |
- Finally yields IOU = Sc/SRi + SRj − SRc. |
Real Situation | Classification Results | |
---|---|---|
Airport Runway | Non-Airport Runway | |
Airport runway | TP | FN |
Non-airport runway | FP | TN |
Aspect Ratio Range | Quantities | Volume (%) |
---|---|---|
1:1–1:10 | 25 | 2.32 |
1:10–1:20 | 48 | 4.45 |
1:20–1:30 | 237 | 21.99 |
1:30–1:40 | 354 | 32.84 |
1:40–1:50 | 263 | 24.40 |
1:50–1:60 | 104 | 9.65 |
1:60–1:70 | 34 | 3.15 |
1:70–1:80 | 8 | 0.74 |
1:80–1:90 | 3 | 0.28 |
1:90–1:100 | 2 | 0.19 |
Model | Precision | Recall | F1 | AP (%) |
---|---|---|---|---|
Mask RCNN | 0.67 | 0.92 | 0.77 | 67.39 |
R-Mask RCNN | 0.71 | 0.94 | 0.82 | 72.28 |
CR-Mask RCNN | 0.77 | 0.98 | 0.86 | 77.07 |
Model | Precision | Recall | F1 | AP (%) |
---|---|---|---|---|
Mask RCNN | 0.60 | 0.82 | 0.69 | 59.60 |
R-Mask RCNN | 0.67 | 0.89 | 0.76 | 66.51 |
CR-Mask RCNN | 0.74 | 0.95 | 0.83 | 73.59 |
Model | Training Time |
---|---|
Mask RCNN | 3 h |
R-Mask RCNN | 4 h 30 min |
CR-Mask RCNN | 5 h 10 min |
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Wan, M.; Zhong, G.; Wu, Q.; Zhao, X.; Lin, Y.; Lu, Y. CR-Mask RCNN: An Improved Mask RCNN Method for Airport Runway Detection and Segmentation in Remote Sensing Images. Sensors 2025, 25, 657. https://doi.org/10.3390/s25030657
Wan M, Zhong G, Wu Q, Zhao X, Lin Y, Lu Y. CR-Mask RCNN: An Improved Mask RCNN Method for Airport Runway Detection and Segmentation in Remote Sensing Images. Sensors. 2025; 25(3):657. https://doi.org/10.3390/s25030657
Chicago/Turabian StyleWan, Meng, Guannan Zhong, Qingshuang Wu, Xin Zhao, Yuqin Lin, and Yida Lu. 2025. "CR-Mask RCNN: An Improved Mask RCNN Method for Airport Runway Detection and Segmentation in Remote Sensing Images" Sensors 25, no. 3: 657. https://doi.org/10.3390/s25030657
APA StyleWan, M., Zhong, G., Wu, Q., Zhao, X., Lin, Y., & Lu, Y. (2025). CR-Mask RCNN: An Improved Mask RCNN Method for Airport Runway Detection and Segmentation in Remote Sensing Images. Sensors, 25(3), 657. https://doi.org/10.3390/s25030657