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Home> Journals> J. Electron. Imag.> Volume 33> Issue 5>Article
16 October 2024Object detection model with efficient feature extraction and asymptotic feature fusion for unmanned aerial vehicle image
Xiangyang Zhao, Zaifeng Shi,Yunfeng Wang,Xiaowei Niu,Tao Luo
Author Affiliations +
Xiangyang Zhao,1 Zaifeng Shi,1,* Yunfeng Wang,1 Xiaowei Niu,1 Tao Luo1

1Tianjin University (China)

*Address all correspondence to Zaifeng Shi, shizaifeng@tju.edu.cn
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Abstract

Object detection in drone unmanned aerial vehicle (UAV) imagery is increasing. However, existing lightweight object detection models still face challenges in UAV aerial image object detection tasks due to the variable object scale and the existence of dense small objects. We propose a lightweight object detection model named YoloV8-RFCA. For small object features, the channel attention mechanism is integrated with receptive-field convolution to construct the Receptive-field conv with Channel Attention (RFCA) attention module, removing the parameter sharing issue and enhancing the feature extraction capability of the backbone network. Focusing on the feature information loss and degradation caused by multi-level transmission during the feature fusion operation, an asymptotic feature fusion strategy is proposed. Related experiment results indicate that the model achieved 82.5 mAP on the PASCAL VOC dataset and 41.9 mAP on the VisDrone2019 dataset. These experimental results confirm that our proposed model has a high practical application value in the field of UAV aerial image object detection.

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Xiangyang Zhao,Zaifeng Shi,Yunfeng Wang,Xiaowei Niu, andTao Luo"Object detection model with efficient feature extraction and asymptotic feature fusion for unmanned aerial vehicle image," Journal of Electronic Imaging 33(5), 053044 (16 October 2024).https://doi.org/10.1117/1.JEI.33.5.053044
Received: 19 April 2024; Accepted: 17 September 2024; Published: 16 October 2024
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KEYWORDS
Object detection

Feature fusion

Convolution

Feature extraction

Unmanned aerial vehicles

Data modeling

Radiofrequency catheter ablation surgery

Target detection

Image fusion

Performance modeling

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Xiangyang Zhao, Zaifeng Shi, Yunfeng Wang, Xiaowei Niu, Tao Luo, "Object detection model with efficient feature extraction and asymptotic feature fusion for unmanned aerial vehicle image," J. Electron. Imag. 33(5) 053044 (16 October 2024) https://doi.org/10.1117/1.JEI.33.5.053044
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