基于航空图像的小目标检测与跟踪

M. Aktaş, H. Ateş
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引用次数: 3

摘要

基于机载图像的目标检测和跟踪引起了人们对无人机系统和计算机视觉技术并行发展的关注。与现代目标探测器的训练集不同,航空图像有其独特的挑战,因为与常规数据集相比,它是由更大区域的图像组成的,相反,物体非常小。这些问题不允许我们使用常见的目标检测模型。本文的主要目的是对fast - rcnn (FRCNN)模型进行修改,然后利用它对航空图像中的小目标进行检测和跟踪。它的目的是利用图像序列的空间和时间信息,因为单独的外观信息是不够的。区域建议网络(RPN)阶段的锚将针对小对象进行调整。同时,对小对象进行了优化。在提高检测性能后,将DeepSORT算法插入感兴趣区域(ROI Head)之后,对目标进行跟踪。结果表明,该模型在VisDrone-2019数据集上具有良好的性能。检测性能大大优于原始的FRCNN和在VisDrone-2019 VID挑战中评估的算法。完成建议的修改后,AP-AP50值从8.08-18.70提高到14.07-29.41,提高了约75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Small Object Detection and Tracking from Aerial Imagery
Object detection and tracking from airborne imagery draws attention to the parallel development of UAV systems and computer vision technologies. Aerial imagery has its own unique challenges that differ from the training set of modern-day object detectors, since it is made of images of larger areas compared to the regular datasets and the objects are very small on the contrary. These problems do not allow us to use common object detection models. The main purpose of this paper is to make modifications to the Faster-RCNN (FRCNN) model, then leverage it for small object detection and tracking from the aerial imagery. It is aimed to use both spatial and temporal information from the image sequence, as appearance information alone is insufficient. The anchors in the Region Proposal Network (RPN) stage will be adjusted for small objects. Also, intersection over union (IoU) is optimized for small objects. After improving detection performance, The DeepSORT algorithm is inserted right after the Region of Interest (ROI Head) to track the objects. The results show that the proposed model has good performance on the VisDrone-2019 dataset. Detection performance becomes considerably better than the original FRCNN and the algorithms that are evaluated in the VisDrone-2019 VID challenge. After completing the proposed modifications, the AP-AP50 values reached 14.07-29.41 from 8.08-18.70, which means approximately 75% improvement.
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