无人机目标检测中数据增强在深度学习中的作用

Ariel Yonatan Alin, Kusrini Kusrini, Kumara Ari Yuana
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引用次数: 0

摘要

无人机目标检测是图像处理技术和基于深度学习的模式识别的主要应用之一。然而,可用于训练检测算法的无人机图像数据有限是无人机目标检测技术发展的一个挑战。因此,人们进行了许多研究,利用数据增强技术来增加无人机图像数据的数量。本研究旨在利用YOLOv5算法评估数据增强对无人机目标检测中深度学习精度的影响。本研究采用的方法包括采集无人机图像数据,对数据进行旋转、裁剪和剪切增强,对数据增强和不增强的YOLOv5算法进行训练,并对训练结果进行测试和分析。研究结果表明,数据增强并不能提高YOLOv5算法在无人机目标检测中的精度。精密度和mAP@0.5值呈下降趋势,召回率和F-1分数相对稳定。这是因为过多的增强会导致数据中重要信息的丢失,而不当的增强会导致数据中的噪声或失真。
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The Effect of Data Augmentation in Deep Learning with Drone Object Detection
Drone object detection is one of the main applications of image processing technology and pattern recognition using deep learning. However, the limited drone image data that can be accessed for training detection algorithms is a challenge in the development of drone object detection technology. Therefore, many studies have been conducted to increase the amount of drone image data using data augmentation techniques. This study aims to evaluate the effect of data augmentation on deep learning accuracy in drone object detection using the YOLOv5 algorithm. The methods used in this research include collecting drone image data, augmenting data with rotate, crop and cutout, training the YOLOv5 algorithm with and without data augmentation, as well as testing and analyzing training results.The results of the study show that data augmentation can't improve the accuracy of the YOLOv5 algorithm in drone object detection. Evidenced by the decreasing value of precision and mAP@0.5 and the relatively constant value of recall and F-1 score. This is caused by too much augmentation can cause loss of important information in the data and improper augmentation can cause noise or distortion in the data.
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发文量
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审稿时长
12 weeks
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