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BS-YOLO:基于BSAM注意力机制和SCConv的小目标检测算法

曹继卫 罗飞 丁炜超

计算机工程2026,Vol.52Issue(3):119-127,9.
计算机工程2026,Vol.52Issue(3):119-127,9.DOI:10.19678/j.issn.1000-3428.0070159

BS-YOLO:基于BSAM注意力机制和SCConv的小目标检测算法

BS-YOLO:A Small Object Detection Algorithm Based on BSAM Attention Mechanism and SCConv

曹继卫 1罗飞 2丁炜超2

作者信息

  • 1. 华东理工大学信息科学与工程学院,上海 200000||上海市计算机软件评测重点实验室,上海 200000
  • 2. 华东理工大学信息科学与工程学院,上海 200000
  • 折叠

摘要

Abstract

In recent years,there has been significant progress in terms of accuracy and robustness of deep-learning-based algorithms for object detection that have been widely applied in industry.However,in the field of small object detection,currently used object detection algorithms suffer from high rates of missed detections and false positives.Therefore,in this study,a YOLO small object detection algorithm,viz.,BS-YOLO,which is based on SCConv and BSAM attention mechanism,is developed.First,in response to the problem of the large amount of redundant information generated in the feature extraction network,a new module,viz.,C3SC,is proposed to reconstruct the backbone network using SCConv.This module reduces redundant information in both spatial and channel aspects of the extracted feature maps,thereby improving the quality of the feature maps extracted by the backbone network,and in turn enhancing detection accuracy.Second,a new attention mechanism,viz.,BSAM,is proposed by combining CBAM and the BiFormer self-attention mechanism,by which weights are allocated reasonably in both spatial and channel aspects,making the feature map more focused on effective information and suppressing background interference.Finally,to solve the problem of uneven distribution of difficult and easy samples in terms of small object detection,Slideloss is used to optimize the loss function,thereby improving the effectiveness of the algorithm for small object detection.The experimental results obtained using the RSOD dataset show that the BS-YOLO algorithm has a precision of 94.2%,a recall rate of 91.6%,and a mAP@0.5 of 95.9%,corresponding to improvements of 3.3,0.1,and 3.6 percentage,respectively,compared to the original YOLOv5 algorithm.This indicates that the BS-YOLO algorithm can effectively improve the accuracy of small object detection and reduce the missed detection rate.

关键词

小目标检测/注意力机制/特征提纯/计算机视觉/深度学习

Key words

small object detection/attention mechanism/feature purification/computer vision/deep learning

分类

信息技术与安全科学

引用本文复制引用

曹继卫,罗飞,丁炜超..BS-YOLO:基于BSAM注意力机制和SCConv的小目标检测算法[J].计算机工程,2026,52(3):119-127,9.

基金项目

上海市自然科学基金(22ZR1416500). (22ZR1416500)

计算机工程

1000-3428

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