YOLOv8 Analysis for Vehicle Classification Under Various Image Conditions

Eben Panja, Hendry Hendry, Christine Dewi
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Abstract

Purpose: The purpose of this research is to detect vehicle types in various image conditions using YOLOv8n, YOLOv8s, and YOLOv8m with augmentation.Methods: This research utilizes the YOLOv8 method on the DAWN dataset. The method involves using pre-trained Convolutional Neural Networks (CNN) to process the images and output the bounding boxes and classes of the detected objects. Additionally, data augmentation applied to improve the model's ability to recognize vehicles from different directions and viewpoints.Result: The mAP values for the test results are as follows: Without data augmentation, YOLOv8n achieved approximately 58%, YOLOv8s scored around 68.5%, and YOLOv8m achieved roughly 68.9%. However, after applying horizontal flip data augmentation, YOLOv8n's mAP increased to about 60.9%, YOLOv8s improved to about 62%, and YOLOv8m excelled with a mAP of about 71.2%. Using horizontal flip data augmentation improves the performance of all three YOLOv8 models. The YOLOv8m model achieves the highest mAP value of 71.2%, indicating its high effectiveness in detecting objects after applying horizontal flip augmentation. Novelty: This research introduces novelty by employing the latest version of YOLO, YOLOv8, and comparing its performance with YOLOv8n, YOLOv8s, and YOLOv8m. The use of data augmentation techniques, such as horizontal flip, to increase data variation is also novel in expanding the dataset and improving the model's ability to recognize objects.
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各种图像条件下的车辆分类 YOLOv8 分析
目的:本研究的目的是使用 YOLOv8n、YOLOv8s 和 YOLOv8m(带增强功能)检测各种图像条件下的车辆类型:本研究在 DAWN 数据集上使用 YOLOv8 方法。该方法包括使用预先训练好的卷积神经网络(CNN)来处理图像,并输出检测到的物体的边界框和类别。此外,还应用了数据增强技术,以提高模型从不同方向和视角识别车辆的能力:测试结果的 mAP 值如下:在没有数据增强的情况下,YOLOv8n 的得分率约为 58%,YOLOv8s 的得分率约为 68.5%,YOLOv8m 的得分率约为 68.9%。然而,在应用水平翻转数据增强后,YOLOv8n 的 mAP 提高到了约 60.9%,YOLOv8s 提高到了约 62%,而 YOLOv8m 则表现出色,mAP 达到了约 71.2%。使用水平翻转数据增强提高了所有三个 YOLOv8 模型的性能。YOLOv8m 模型的 mAP 值最高,达到 71.2%,这表明它在应用水平翻转增强后在检测物体方面非常有效。新颖性:本研究采用了最新版本的 YOLO(YOLOv8),并将其性能与 YOLOv8n、YOLOv8s 和 YOLOv8m 进行了比较,从而引入了新颖性。使用数据增强技术(如水平翻转)来增加数据变化也是一种新方法,可扩展数据集并提高模型识别物体的能力。
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发文量
13
审稿时长
24 weeks
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