China Safety Science Journal ›› 2026, Vol. 36 ›› Issue (6): 110-118.doi: 10.16265/j.cnki.issn1003-3033.2026.06.0726
• Safety Technology and Engineering • Previous Articles Next Articles
Qi Yun1(
), Yao Rui2, Zhan Xinhui2, Xue Kailong3, Jing Xueyan4, Qi Qingjie5
Received:2026-01-10
Revised:2026-04-07
Online:2026-06-28
Published:2026-12-28
CLC Number:
Qi Yun, Yao Rui, Zhan Xinhui, Xue Kailong, Jing Xueyan, Qi Qingjie. Improved method for detecting external fire causes in mines using YOLOv9m[J]. China Safety Science Journal, 2026, 36(6): 110-118.
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URL: http://www.cssjj.com.cn/EN/10.16265/j.cnki.issn1003-3033.2026.06.0726
Table 2
Ablation experiment results
| PP-LCNet | FCAttention | CARAFE | MPDIoU | P/ % | R/ % | mAP@0.5/ % | 参数量/ MB | 运算次数/ GB | 检测速度/ (帧/s) |
|---|---|---|---|---|---|---|---|---|---|
| × | × | × | × | 92.59 | 87.36 | 93.49 | 32.55 | 130.72 | 29.50 |
| √ | × | × | × | 83.79 | 76.04 | 84.72 | 19.53 | 83.901 | 59.49 |
| √ | √ | × | × | 91.20 | 79.61 | 89.00 | 27.12 | 104.90 | 27.79 |
| √ | √ | √ | × | 94.32 | 80.43 | 95.46 | 28.12 | 112.97 | 35.35 |
| √ | √ | √ | √ | 97.36 | 84.91 | 96.49 | 28.12 | 112.97 | 36.33 |
Table 3
Performance comparison results between improved model and mainstream models
| 模型 | P/% | R/% | mAP@0.5/% | 参数量/MB | 运算量/GB |
|---|---|---|---|---|---|
| Fast R-CNN | 81.62 | 80.86 | 83.76 | 128.55 | 247.76 |
| YOLOv5 | 94.07 | 82.77 | 94.91 | 34.63 | 126.78 |
| YOLOv7 | 92.48 | 81.34 | 91.42 | 35.79 | 136.67 |
| YOLOv8 | 92.59 | 87.36 | 94.49 | 32.45 | 140.72 |
| PPL-YOLOv9m-F-C | 97.36 | 84.91 | 96.49 | 28.12 | 112.97 |
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