Smart Agriculture ›› 2025, Vol. 7 ›› Issue (2): 146-159.doi: 10.12133/j.smartag.SA202412003
• Information Processing and Decision Making • Previous Articles Next Articles
LI Zusheng1,2, TANG Jishen2, KUANG Yingchun1(
)
Received:2024-12-02
Online:2025-03-30
Foundation items:The National Natural Science Foundation of China(61972147)
About author:LI Zusheng, E-mail: lizusheng@stu.hunau.edu.cn
corresponding author:
CLC Number:
LI Zusheng, TANG Jishen, KUANG Yingchun. A Lightweight Model for Detecting Small Targets of Litchi Pests Based on Improved YOLOv10n[J]. Smart Agriculture, 2025, 7(2): 146-159.
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URL: https://www.smartag.net.cn/EN/10.12133/j.smartag.SA202412003
Table 3
Comparison results of improving the YOLOv10n model in the CG dataset using different attention mechanisms
| Model | Model size/MB | AP50/% | AP50:95/% | AP-Small50:95/% | GFLOPs | Params/M | FPS |
|---|---|---|---|---|---|---|---|
| YOLOv10n+C2f_MCA | 4.56 | 89.3 | 61.1 | 58.4 | 5.1 | 1.78 | 162.2 |
| YOLOv10n+C2f_CBAM | 4.56 | 89.3 | 61.1 | 58.3 | 5.1 | 1.78 | 204.1 |
| YOLOv10n+C2f_FCA | 4.59 | 89.2 | 61.1 | 58.4 | 5.1 | 1.81 | 200.7 |
| YOLOv10n+C2f_PPA | 6.37 | 89.6 | 61.5 | 58.6 | 7.5 | 2.68 | 108.3 |
| YOLOv10n+C2f_MCAttention | 4.57 | 89.0 | 60.9 | 58.1 | 5.1 | 1.79 | 233.9 |
| YOLOv10n+C2f_GLSA | 5.33 | 90.4 | 62.0 | 59.5 | 5.7 | 2.11 | 153.2 |
Table 4
The ablation results of the YOLO-LP model
| Baseline | C2f_GLSA | FreqPANet | SIoU | AP50/% | AP50:95/% | AP-Small50:95 | GFLOPs | Params/M | FPS |
|---|---|---|---|---|---|---|---|---|---|
| YOLOv10n | × | × | × | 89.0 | 61.2 | 58.3 | 6.5 | 2.27 | 259.3 |
| √ | × | × | 90.4 | 62.0 | 59.5 | 5.7 | 2.11 | 153.2 | |
| × | √ | × | 89.4 | 61.3 | 58.4 | 6.2 | 2.12 | 169.5 | |
| × | × | √ | 89.8 | 61.9 | 59.2 | 6.5 | 2.27 | 257.1 | |
| √ | √ | × | 90.3 | 61.8 | 59.3 | 5.4 | 1.97 | 121.9 | |
| √ | × | √ | 89.7 | 61.5 | 58.7 | 5.7 | 2.11 | 150.7 | |
| × | √ | √ | 90.2 | 62.0 | 59.4 | 6.2 | 2.12 | 168.8 | |
| √ | √ | √ | 90.9 | 62.2 | 59.5 | 5.4 | 1.97 | 122.6 |
Table 6
Comparison test results between YOLO-LP and current mainstream models on CG dataset
| Model | Model size/MB | AP50/% | AP50:95/% | AP-Small50:95/% | GFLOPs | Params/M |
|---|---|---|---|---|---|---|
| YOLOv3 | 117.80 | 89.4 | 61.7 | 59.0 | 154.6 | 61.50 |
| YOLOv5n | 5.02 | 89.7 | 61.3 | 58.4 | 7.1 | 2.50 |
| YOLOv8n | 5.95 | 88.5 | 60.4 | 57.2 | 8.1 | 3.00 |
| YOLOv9s | 14.50 | 90.3 | 62.2 | 59.2 | 26.7 | 7.17 |
| RT-DETR-R18 | 38.50 | 90.9 | 63.1 | 60.4 | 56.9 | 19.87 |
| Conditional-DETR-R50 | 525.90 | 80.2 | 50.7 | 47.3 | 43.5 | 43.40 |
| TOOD-R50 | 245.60 | 89.6 | 59.8 | 57.0 | 81.6 | 32.00 |
| GFL-R50 | 247.70 | 88.1 | 59.5 | 56.6 | 84.6 | 32.30 |
| Cascade-RCNN-R50 | 531.50 | 84.6 | 57.8 | 54.7 | 121.0 | 69.10 |
| Faster-RCNN-R50 | 317.60 | 83.2 | 55.5 | 52.5 | 93.6 | 41.40 |
| DINO-R50 | 569.60 | 89.9 | 60.3 | 57.6 | 122.0 | 47.50 |
| YOLO-LP(Ours) | 5.10 | 90.9 | 62.2 | 59.5 | 5.4 | 1.97 |
Table 7
Comparison test results of YOLO-LP in different scenarios
| 场景名称 | 模型 | AP50/% | AP50:95/% | AP-Small50:95/% |
|---|---|---|---|---|
| 晴天 | YOLOv10n | 86.2 | 60.5 | 56.2 |
| YOLO-LP | 88.1 | 61.5 | 58.2 | |
| 阴天 | YOLOv10n | 88.7 | 60.3 | 56.4 |
| YOLO-LP | 91.2 | 61.6 | 57.7 | |
| 雨后 | YOLOv10n | 87.7 | 58.5 | 59.3 |
| YOLO-LP | 89.7 | 60.9 | 61.7 | |
| 实验室 | YOLOv10n | 95.5 | 68.9 | 68.4 |
| YOLO-LP | 96.2 | 67.9 | 67.8 |
| [1] |
齐文娥, 陈厚彬, 罗滔, 等. 中国大陆荔枝产业发展现状、趋势与对策[J]. 广东农业科学, 2019, 46(10): 132-139.
|
|
|
|
| [2] |
陈厚彬, 杨胜男, 苏钻贤, 等. 2024年全国荔枝生产形势分析与管理建议[J]. 中国热带农业, 2024(3): 8-20.
|
|
|
|
| [3] |
刘冬梅, 杨杭旭, 周宏平, 等. 茶树植保机械及减量施药技术研究进展[J]. 中国农机化学报, 2021, 42(9): 59-67.
|
|
|
|
| [4] |
白荻, 王寅凯, 熊燕华. 基于集成学习的茶树病虫害检测方法[J/OL]. 南京农业大学学报. (2024-08-01)[2024-11-23].
|
|
|
|
| [5] |
牛冲, 牛昱光, 李寒, 等. 基于图像灰度直方图特征的草莓病虫害识别[J]. 江苏农业科学, 2017, 45(4):169-172.
|
|
|
|
| [6] |
|
| [7] |
欧善国, 张桂香, 彭晓丹. 荔枝病虫害图像识别技术研究和应用[J]. 农业工程, 2020, 10(11): 29-35.
|
|
|
|
| [8] |
叶进, 邱文杰, 杨娟, 等. 基于深度学习的荔枝虫害识别方法[J]. 实验室研究与探索, 2021, 40(6): 29-32.
|
|
|
|
| [9] |
|
| [10] |
WOO S,
|
| [11] |
彭红星, 何慧君, 高宗梅, 等. 基于改进ShuffleNetV2模型的荔枝病虫害识别方法[J]. 农业机械学报, 2022, 53(12): 290-300.
|
|
|
|
| [12] |
谢家兴, 陈斌瀚, 彭家骏, 等. 基于改进ShuffleNetV2的荔枝叶片病虫害图像识别[J]. 果树学报, 2023, 40(5): 1024-1035.
|
|
|
|
| [13] |
王卫星, 刘泽乾, 高鹏, 等. 基于改进YOLOv4的荔枝病虫害检测模型[J]. 农业机械学报, 2023, 54(5): 227-235.
|
|
|
|
| [14] |
|
| [15] |
|
| [16] |
|
| [17] |
|
| [18] |
|
| [19] |
|
| [20] |
|
| [21] |
|
| [22] |
|
| [23] |
|
| [24] |
|
| [25] |
|
| [26] |
|
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