Please wait a minute...
Computer & Telecommunication  2024, Vol. 1 Issue (1): 78-83    DOI: 10.15966/j.cnki.dnydx.2024.z1.010
Current Issue | Archive | Adv Search |
Aerial Vehicle Detection in Low Light Environment Based on Yolov5
Shenyang Aerospace University
Download:
Export: BibTeX | EndNote (RIS)      
Abstract  
An improved algorithm is proposed to address the problem that yolov5 detects UAV aerial images with poor monitoring performance for low light background targets. Firstly, data normalization is performed on the target dataset visdrone2019 to improve the detection effect. Then the dynamic convolution kernel with Mish activation function and the C3_DSConv module using distrib‐ uted offset convolution to replace the C3 block are introduced, and the above two convolution structures are fused into the yolov5 network; the BiFormer attention mechanism is embedded to improve the accuracy of small target detection. In summary, the MODByolov5 model is finally obtained, and the experimental results prove that the model's mAP and recall are both improved, and the ac‐ curacy of detecting vehicles in shadows and dark environments is significantly increased, and the FPS is high, which ensures that the model can still be used for rapid detection or real-time monitoring.
Key wordsUAV aerial images      deep learning      Mish activation function      convolution structure      attention mechanism     
Published: 13 May 2024

Cite this article:

XIN Bo-fu. Aerial Vehicle Detection in Low Light Environment Based on Yolov5. Computer & Telecommunication, 2024, 1(1): 78-83.

URL:

https://www.computertelecom.com.cn/EN/10.15966/j.cnki.dnydx.2024.z1.010     OR     https://www.computertelecom.com.cn/EN/Y2024/V1/I1/78

[1] LI Chun-hui WANG Xiao-ying ZHANG Qing-jie LIU Han-zhuo LIANG Jia-ye GAO Ning-kang. DDoS Attack Detection Method Based on Multi-scale Convolutional Neural Network [J]. 电脑与电信, 2024, 1(6): 35-.
[2] WANG Jin WANG Rui. Facial Expression Recognition Algorithm Based on Multi-scale Feature Deep Learning[J]. 电脑与电信, 2024, 1(5): 75-.
[3] NIE Cheng WANG Jie.
A Review of Research and Development in Data Analysis Methods
[J]. 电脑与电信, 2024, 1(4): 200-25.
[4] SU Cui-wen CHAI Guo-qiang.
Real-time Facial Expression Recognition Based on Facial Feature Detection
[J]. 电脑与电信, 2023, 1(1-2): 17-21.
[5] HE Zong-xi JIANG Ming-zhong XIE Ming-xia PANG Jia-bao CHEN Qiu-yan HU Yi-bo. Design of Driver Fatigue Recognition Algorithm Based on YOLOv8 and Face Key Points Detection[J]. 电脑与电信, 2023, 1(11): 1-6.
[6] LI Qing-xu ZHANG Chen CHENG Xue. [J]. 电脑与电信, 2022, 1(1-2): 1-6.
[7] ZHANG Miao-miao CHAI Guo-qiang YU Hai-le XU Hao-xuan.
Facial Feature Test and Fatigue Driving Warning Based on Deep Learning
[J]. 电脑与电信, 2022, 1(12): 1-.
[8] XU Ming-yuan YANG Yan-hong. Design of Baggage Detection System Based on Deep Learning[J]. 电脑与电信, 2021, 1(4): 36-40.
[9] LIN Long. Model-based Robust RecognitionAlgorithm for Deep Learning Communication Signals[J]. 电脑与电信, 2021, 1(1): 20-22.
[10] YAN Lei. Study on the Deep Learning Diagnosis and Intervention of Online Courses for Higher Vocational College Enrollment Students under LearningAnalysis Technology[J]. 电脑与电信, 2020, 1(6): 30-33.
[11] . Time Window Setting on PredictionAccuracy of Rock Pressure in Fully Mechanized Working Face[J]. 电脑与电信, 2020, 1(4): 14-18.
[12] ZHANG Gang , CHEN Jia-lian, SONG Jian, GUO Jun-qi, ZHOU Chen-rui. Chinese Landscape Painting Automated Generation Model Based on Generative Adversarial Networks[J]. 电脑与电信, 2020, 1(3): 1-.
[13] YANG Zhen-lin. Low Complexity LDPC Decoder Based on Deep Learning[J]. 电脑与电信, 2020, 1(3): 62-65.
[14] GENG Yi-wen. Research on Recommendation System Based on StackedAutoencoder[J]. 电脑与电信, 2020, 1(11): 65-70.
[15] HUANG Ling-zhen. Development in the Research on Steganalysis[J]. 电脑与电信, 2018, 1(1-2): 79-81.
Copyright © Computer & Telecommunication, All Rights Reserved.
Powered by Beijing Magtech Co. Ltd