稳健性(进化)
计算机科学
目标检测
人工智能
精确性和召回率
计算机视觉
传感器融合
对象(语法)
钥匙(锁)
数据挖掘
特征(语言学)
融合
特征提取
视频跟踪
基于对象
召回
自动化
模式识别(心理学)
信息融合
图像融合
标识
DOI:10.1016/j.aej.2026.04.038
摘要
In intelligent transportation and autonomous driving, precise object detection is crucial for vehicle–road coordination. While YOLO algorithms have made strides, issues such as low accuracy and limited robustness persist, especially with small objects, complex backgrounds, and object deformations. This paper proposes SG-YOLO, an enhanced version of YOLOv11, designed to overcome these limitations. It introduces three key modules: the CSPPS (Cross-Stage Partial Prediction Sharing) module, which improves information flow and small object detection; the SCConv module, which strengthens local–global feature fusion for complex backgrounds; and the GAM module, which uses global attention for better target localization. Experimental results show that SG-YOLO outperforms YOLOv11 and other methods in precision and recall. Specifically, on the BDD100K dataset, SG-YOLO achieves a precision of 0.742 and recall of 0.521, while on the NEXET dataset, it reaches 0.681 precision and 0.532 recall. These results demonstrate SG-YOLO’s superiority in handling multi-object overlap and small object detection, proving its robustness for autonomous driving.
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