IDD-DETR: Insulator Defect Detection Model and Low-Carbon Operation and Maintenance Application Based on Bidirectional Cross-Scale Fusion and Dynamic Histogram Attention
Abstract
1. Introduction
- Feature-Focused Diffusion Network (FFDN): This replaces traditional PAFPN, constructing a bidirectional interaction mechanism from top-down and bottom-up, improving the efficiency of multi-scale feature fusion, solving the problem of small target feature degradation, and laying the foundation for accurate detection.
- Dynamic-Range Histogram Self-Attention (DHSA): This separates defects and background features through brightness sorting, enhancing texture response in low-brightness areas, improving the detection rate of low-contrast defects, and fundamentally reducing the risk of failures caused by missed detections.
2. Related Work
2.1. Characteristic Pyramid Network
2.2. Feature Fusion Module
3. Model Architecture
3.1. Overall Network Architecture Design
- Replacing the original feature fusion network with a Feature-Focused Diffusion Network (FFDN) and improving cross-scale fusion efficiency through bidirectional feature interaction;
- Designing a feature-focusing module to enhance multi-scale feature complementarity with dynamic weights and improve small target detail capture;
- Introducing Dynamic-Range Histogram Self-Attention (DHSA) to optimize low-contrast defect modeling and reduce background interference.
3.2. Improvement of Multi-Scale Feature Fusion Network
3.2.1. Feature-Focused Diffusion Network
3.2.2. Feature-Focusing Module
3.3. Improvement of Feature Focusing Module
3.4. Improvement of AIFI Module and Dynamic Histogram Attention Mechanism
3.4.1. Dynamic-Range Convolution
3.4.2. Histogram Self-Attention
- Number of boxes and filling rules
- 2.
- Dual-path binning direction (matching BHR and FHR)
- 3.
- Attention and feature restoration within the box
4. Experiment-Related Work
4.1. Experimental Environment Configuration
4.2. Dataset Construction and Feature Analysis
4.2.1. Data Source and Scale
4.2.2. Data Partitioning and Enhancement Trade-Offs
4.3. Evaluating Indicator
4.4. Experiment and Result Analysis
4.4.1. Comparative Experiment on Improvement of Attention Mechanism
4.4.2. Ablation Experiment: Validation of Module Effectiveness
4.4.3. Comparison of Mainstream Target Detection Networks
4.4.4. Robustness Test in Complex Environment
4.4.5. Quantification of Environmental Benefits and Synergy with SDGs
- Carbon reduction benefits of insulator defect detection
- (1)
- Baseline Model (Experiment 1):
- (2)
- IDD-DETR Model (Experiment 5):
- 2.
- Computational efficiency and green computing advantages
- 3.
- Indirect carbon reduction value of environmental robustness
- 4.
- The social value of improving operational efficiency and reducing security risks
- 5.
- Collaborative contribution with SDGs
4.5. Visualization Analysis
4.5.1. Comparison and Verification of Heatmaps
4.5.2. Visual Analysis of Detection Capability
4.5.3. Precision–Recall Curves
- Overall performance comparison
- 2.
- Curve shape and improved logic
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Parameter | Allocation |
---|---|
Operating system | Windows 10 Professional 22H2 |
CPU | 12th Gen Intel(R) Core(TM) i5-12490F |
GPU | NVIDIA GeForce RTX3060-12G |
Torch | 2.0.1 |
CUDA | 11.7 |
Python | 3.8.18 |
Optimization algorithm | SGD |
Learning rate attenuation strategy | step |
Initial Learning Rate | 0.01 |
Final Learning Rate Coefficient | 1.0 |
Momentum | 0.937 |
Warmup Initial Momentum | 0.8 |
Weight Decay | 0.0005 |
Warmup Epochs | 2000 |
Warmup Initial Bias Learning Rate | 0.1 |
Nominal Batch Size | 64 |
Batch size | 16 |
Epochs | 300 |
Evaluating Indicator | Meaning |
---|---|
Parameters (M) | Network Parameter Quantity |
FLOPs (G) | Network Floating Point Operations |
Precision (%) | Accuracy Rate |
Recall (%) | Recall |
Average Precision, AP (%) | Average Accuracy |
Mean Average Precision, mAP (%) | Mean Average Precision |
FPS | Network Detection Speed |
Network | Multi-Head Self-Attention | AP50 Insulator | AP50 Damage | AP50 Flashover | mAP50 (%) |
---|---|---|---|---|---|
RT-DETR | CGA | 89.3 | 79.3 | 64.3 | 77.7 |
DMHA | 89.8 | 80.3 | 64.9 | 78.4 | |
HiLo | 89.1 | 78.5 | 64.5 | 77.4 | |
EAA | 90.2 | 79.8 | 65.9 | 78.6 | |
DHSA | 91.1 | 76.8 | 63.3 | 77.1 | |
IDD-DETR | CGA | 90.6 | 78.1 | 66.4 | 78.3 |
DMHA | 90.8 | 80.5 | 63.1 | 78.2 | |
HiLo | 90.1 | 78.1 | 66.4 | 78.2 | |
EAA | 90.1 | 80.0 | 62.5 | 77.5 | |
DHSA | 91.5 | 79.0 | 74.6 | 81.7 |
Experiment | FFDN | DASI | DHSA | AP50 Insulator | AP50 Damage | AP50 Flashover | mAP50 (%) | Parameters (M) | FLOPs (G) |
---|---|---|---|---|---|---|---|---|---|
1 | 88.2 | 76.9 | 68.5 | 77.9 | 20.2 | 59.6 | |||
2 | √ | 88.9 | 79.0 | 67.3 | 78.4 | 22.5 | 68.2 | ||
3 | √ | 90.4 | 78.3 | 63.7 | 77.5 | 20.3 | 59.0 | ||
4 | √ | √ | 90.3 | 82.0 | 70.6 | 81.0 | 21.4 | 65.4 | |
5 | √ | √ | √ | 91.5 | 79.0 | 74.6 | 81.7 | 21.6 | 65.7 |
Indicator Dimension | RT-DETR | IDD-DETR | Relative Improvement |
---|---|---|---|
mAP@0.50:0.95 | 49.7 | 55.2 | +11.1% |
mAP@0.50 (mAP50) | 77.9 | 81.7 | +4.9% |
mAP@0.75 | 52.3 | 57.3 | +9.6% |
AP_small (area < 322) | 3.0 | 8.0 | +166.7% |
AP_medium (322 < area < 962) | 29.9 | 32.0 | +7.0% |
AP_large (area > 962) | 45.8 | 52.1 | +13.7% |
AR@1 (single object) | 37.7 | 40.8 | +8.2% |
AR@10 (multiple objects) | 61.2 | 66.2 | +8.2% |
Detection Network | AP50 Insulator | AP50 Damage | AP50 Flashover | mAP50 (%) | Parameters (M) | FLOPs (G) | Speed (FPS) |
---|---|---|---|---|---|---|---|
Faster R-CNN | 89.8 | 64.4 | 66.7 | 73.6 | 28.48 | 941.2 | 11 |
SSD | 87.5 | 58.4 | 57.9 | 67.9 | 26.29 | 62.7 | 78 |
YOLOv4-tiny | 86.6 | 77.6 | 59.4 | 74.5 | 6.06 | 7.0 | 189 |
YOLOv5-s | 91.1 | 79.8 | 63.8 | 78.2 | 7.28 | 17.2 | 106 |
YOLOv7-tiny | 89.9 | 79.1 | 62.1 | 77.0 | 6.02 | 13.2 | 230 |
YOLOv8-n | 91.2 | 76.7 | 64.5 | 77.5 | 3.16 | 8.9 | 162 |
IDD-Net | 90.0 | 79.9 | 73.3 | 81.1 | 5.67 | 12.9 | 180 |
YOLOv5m | 82.8 | 80.9 | 64.2 | 76.0 | 25.1 | 64.2 | 73 |
YOLOv6s | 83.8 | 79.6 | 58.9 | 74.1 | 16.5 | 44.9 | 132 |
YOLOv7 | 91.3 | 81.0 | 62.1 | 78.1 | 37.2 | 105.1 | 51 |
YOLOv8m | 88.4 | 79.2 | 65.3 | 77.7 | 25.9 | 79.3 | 61 |
YOLOv9c | 87.3 | 79.4 | 67.3 | 78.0 | 25.6 | 104.0 | 50 |
YOLOv10l | 87.6 | 80.2 | 59.4 | 75.7 | 25.8 | 127.9 | 43 |
YOLOv11l | 80.7 | 81.3 | 72.6 | 78.2 | 25.4 | 87.6 | 53 |
YOLOv12l | 84.9 | 80.6 | 70.4 | 78.7 | 26.5 | 89.7 | 35 |
YOLOv12s | 89.5 | 79.2 | 74.0 | 80.0 | 9.4 | 21.7 | 132 |
RT-DETR | 88.2 | 76.9 | 68.5 | 77.9 | 20.2 | 59.6 | 75 |
LGI-DETR | 90.8 | 78.5 | 72.1 | 80.5 | 22.3 | 68.9 | 70 |
Deformable DETR | 85.2 | 72.1 | 69.3 | 79.1 | 35.8 | 210.5 | 28 |
Swin-Tiny | 87.4 | 75.5 | 71.2 | 80.5 | 28.3 | 156.8 | 42 |
IDD-DETR | 91.5 | 79.0 | 74.6 | 81.7 | 21.6 | 65.7 | 76 |
Detection Network | Normal Image mAP50 (%) | Darkened Image mAP50 (%) | Brighten Image mAP50 (%) | Foggy Image mAP50 (%) | Rain Image mAP50 (%) |
---|---|---|---|---|---|
Faster R-CNN | 73.6 | 70.9 | 70.4 | 69.9 | 73.1 |
SSD | 67.9 | 67.4 | 66.1 | 65.9 | 68.1 |
YOLOv4-tiny | 74.5 | 71.4 | 71.1 | 68.3 | 70.2 |
YOLOv5-s | 78.2 | 70.4 | 69.7 | 68.1 | 71.1 |
YOLOv7-tiny | 77.0 | 74.2 | 75.7 | 74.2 | 75.9 |
YOLOv8-n | 77.5 | 69.6 | 75.4 | 72.5 | 74.3 |
IDD-Net | 81.1 | 75.9 | 78.7 | 76.1 | 78.0 |
YOLOv5m | 76.0 | 76.9 | 77.1 | 76.8 | 76.3 |
YOLOv6s | 74.1 | 73.3 | 75.1 | 69.8 | 73.9 |
YOLOv8m | 77.7 | 78.1 | 78.7 | 77.2 | 77.1 |
YOLOv9c | 78.0 | 78.8 | 79.8 | 76.9 | 79.7 |
YOLOv10l | 75.7 | 70.0 | 74.5 | 72.2 | 77.0 |
YOLOv11l | 78.2 | 72.8 | 78.1 | 75.2 | 75.5 |
YOLOv12l | 78.7 | 76.7 | 79.6 | 74.6 | 76.1 |
RT-DETR | 77.9 | 75.7 | 77.3 | 75.6 | 79.0 |
IDD-DETR | 81.7 | 79.1 | 82.9 | 78.2 | 80.0 |
Detection Network | Darkened Image mAP50 Percentage Decrease | Brightened Image mAP50 Percentage Decrease | Foggy Image mAP50 Percentage Decrease | Rain Image mAP50 Percentage Decrease | Average Percentage Decline |
---|---|---|---|---|---|
Faster R-CNN | 2.7 | 3.2 | 3.7 | 0.5 | 2.525 |
SSD | 0.5 | 1.8 | 2.0 | -0.2 | 1.025 |
YOLOv4-tiny | 3.1 | 3.4 | 6.2 | 4.3 | 4.25 |
YOLOv5-s | 7.8 | 8.5 | 10.1 | 7.1 | 8.375 |
YOLOv7-tiny | 2.8 | 1.3 | 2.8 | 1.1 | 2.0 |
YOLOv8-n | 7.9 | 2.1 | 5.0 | 3.2 | 4.55 |
IDD-Net | 5.2 | 2.4 | 5 | 3.1 | 3.925 |
YOLOv5m | −0.9 | −1.1 | −0.8 | −0.3 | −0.775 |
YOLOv6s | 0.8 | −1 | 4.3 | 0.2 | 1.075 |
YOLOv8m | −0.4 | −1 | 0.5 | 0.6 | −0.075 |
YOLOv9c | −0.8 | −1.8 | 1.1 | −1.7 | −0.8 |
YOLOv10l | 5.7 | 1.2 | 3.5 | −1.3 | 2.275 |
YOLOv11l | 5.4 | 0.1 | 3.0 | 2.7 | 2.8 |
YOLOv12l | 2.0 | 0.6 | 2.3 | −1.1 | 0.95 |
RT-DETR | 2.2 | 0.6 | 2.3 | −1.1 | 1.0 |
IDD-DETR | 2.6 | −1.2 | 3.5 | 1.7 | 1.65 |
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Share and Cite
Chen, W.; Li, S.; Han, X. IDD-DETR: Insulator Defect Detection Model and Low-Carbon Operation and Maintenance Application Based on Bidirectional Cross-Scale Fusion and Dynamic Histogram Attention. Sensors 2025, 25, 5848. https://doi.org/10.3390/s25185848
Chen W, Li S, Han X. IDD-DETR: Insulator Defect Detection Model and Low-Carbon Operation and Maintenance Application Based on Bidirectional Cross-Scale Fusion and Dynamic Histogram Attention. Sensors. 2025; 25(18):5848. https://doi.org/10.3390/s25185848
Chicago/Turabian StyleChen, Weizhen, Shuaishuai Li, and Xingyu Han. 2025. "IDD-DETR: Insulator Defect Detection Model and Low-Carbon Operation and Maintenance Application Based on Bidirectional Cross-Scale Fusion and Dynamic Histogram Attention" Sensors 25, no. 18: 5848. https://doi.org/10.3390/s25185848
APA StyleChen, W., Li, S., & Han, X. (2025). IDD-DETR: Insulator Defect Detection Model and Low-Carbon Operation and Maintenance Application Based on Bidirectional Cross-Scale Fusion and Dynamic Histogram Attention. Sensors, 25(18), 5848. https://doi.org/10.3390/s25185848