Submitted:
19 March 2025
Posted:
20 March 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Related Work
2.1. Evolution of Object Detection in Medical Imaging
2.2. Parasite Detection in Microscopy Images
2.3. Integration of Attention Mechanisms
2.4. Lightweight Object Detectors
3. Materials and Methods
3.1. Dataset
3.2. Object Detectors
3.3. Detection Metrics
3.4. Ghost Convolution
3.5. The Proposed Architecture: YOLO-Tryppa
4. Experimental Evaluation
4.1. Experimental Setup
4.2. Experimental Results
4.3. Ablation Study
4.4. Qualitative Results
5. Limitations
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
| NTDs | Neglected tropical diseases |
| CNNs | Convolutional neural networks |
| YOLO | You Only Look Once |
| CAD | Computer-aided diagnostic |
| AP | Average Precision |
| TP | True Positives |
| FP | False Positives |
| FN | False Negatives |
| P | Precision |
| R | Recall |
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| Method | Image size | Precision (%)↑ | Recall (%)↑ | F1 (%)↑ | AP50 (%)↑ | AP (%)↑ | Parameters (M)↓ | GFLOPs↓ |
| Baseline RetinaNet [5] | - | - | - | 50.0 | - | - | - | |
| Baseline Faster R-CNN [5] | - | - | - | 63.0 | - | - | - | |
| Baseline YOLOv7 [5] | - | - | - | 55.0 | - | 36.9 | 104.7 | |
| YOLOv5m | 71.6 | 59.3 | 64.9 | 66.0 | 30.7 | 21.2 | 49.0 | |
| YOLOv5l | 70.0 | 57.5 | 63.1 | 64.1 | 30.5 | 46.5 | 109.1 | |
| YOLOv8m | 72.9 | 62.2 | 67.1 | 68.4 | 32.5 | 25.9 | 79.3 | |
| YOLOv8l | 61.4 | 49.5 | 54.8 | 54.4 | 24.5 | 43.7 | 165.7 | |
| YOLOv11m | 71.5 | 63.0 | 67.0 | 68.4 | 31.4 | 20.0 | 68.2 | |
| YOLOv11l | 72.7 | 61.6 | 66.7 | 68.0 | 31.4 | 25.4 | 87.6 | |
| YOLO Para SP | 72.9 | 63.6 | 67.4 | 68.8 | 33.9 | 38.9 | 237.3 | |
| YOLO Para SMP | 73.2 | 60.3 | 66.1 | 66.9 | 31.1 | 51.5 | 142.5 | |
| YOLO Para AP | 69.1 | 60.7 | 64.6 | 66.0 | 32.0 | 66.7 | 161.9 | |
| YOLO-Tryppa | 71.0 | 65.4 | 68.1 | 69.2 | 33.9 | 11.3 | 77.1 |
| Model | Ghost convolution | P2 prediction head | CBAM | P5 prediction head removed | P1 prediction head | AP50↑ | Parameters↓ | GFLOPs↓ |
| YOLOv11m | 68,4% | 20,0 | 68,2 | |||||
| YOLOv11m | ✓ | 67,2% | 16,7 | 63,8 | ||||
| YOLOv11m | ✓ | ✓ | 69,2% | 14,6 | 79,8 | |||
| YOLOv11m | ✓ | ✓ | ✓ | ✓ | 66,6% | 14,8 | 80,1 | |
| YOLOv11m | ✓ | ✓ | ✓ | ✓ | ✓ | 63,6% | 16,8 | 112,3 |
| YOLO-Tryppa | ✓ | ✓ | ✓ | 69,2% | 11,3 | 77,1 |
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