unit - dronefog:通过高质量的空中雾数据集实现高性能目标检测

Minh-Trieu Tran, Bao V. Tran, Nguyen D. Vo, Khang Nguyen
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引用次数: 3

摘要

近年来,虽然对晴空图像的目标检测进行了各种各样的研究,但对雾天航空图像的目标检测关注甚少。本文主要研究雾天航拍图像中目标的检测问题。首先,我们通过在从unit - drone21数据集收集的15,370张航空图像上实现雾模拟器(取自imagug库)来创建unit - dronefog数据集。该数据集的显著特点是越南摩托车密度高,有4个对象:行人、汽车、汽车和公共汽车。其次,我们进一步利用两种最先进的对象方法:引导锚定和双头。实验结果表明,双头像的mAP得分较高,为33.20%。此外,我们提出了一种称为CasDou的方法,该方法结合了级联RCNN,双头和Focal Loss。CasDou显著提高mAP评分34.70%。综合评价指出了各种方法的优点和局限性,为进一步的工作奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
UIT-DroneFog: Toward High-performance Object Detection Via High-quality Aerial Foggy Dataset
In recent years, although various research has been performed on object detection with clear weather images, little attention has been paid to object detection with foggy aerial images. In this paper, we address the problem of detecting objects in foggy aerial images. Firstly, we create the UIT-DroneFog dataset by implementing a fog simulator (taken from the imgaug library) on 15,370 aerial images collected from the UIT-Drone21 dataset. This dataset has its distinguishing characteristic of having dense motorbike density in Vietnam with 4 objects: Pedestrian, Motor, Car, and Bus. Secondly, we further leverage two state-of-the-art object methods: Guided Anchoring, and Double Heads. The experiment results show that Double Heads achieve a higher mAP score, with 33.20%. Additionally, we propose a method called CasDou, which is the combination of Cascade RCNN, Double Heads, and Focal Loss. CasDou remarkably improves the mAP score up to 34.70%. The comprehensive evaluation points out the advantages and limitations of each method, which is the fundamental basement for further work.
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