A Study on Vehicle Detection through Aerial Images: Various Challenges, Issues and Applications

Sandeep Kumar, E. G. Rajan, S. Rani
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引用次数: 4

Abstract

Nowadays vehicle detection and counting at the border of countries, as well as states/cities, has become popular through aerial images because of security concerns. It will play a vital role to reduce the various crimes i.e. (children kidnapping, drug/alcohol smuggling, traffic misconduct, weapons smuggling, sexual misconduct and mission of country-related crime, etc.) at the border of the cities as well as countries. Vehicle detection and counting have various other applications like traffic management, parking allotment, tracking the rescue vehicle in hill areas, digital watermarking, vehicle tracking at the toll plaza and urban planning, etc. However, vehicle detection and counting task are very challenging and difficult because of the complex background, the small size of the vehicle, other similar visual appearance objects, distance, etc. Till now, traditional methodology introduced several robust algorithms which has limitations while extracting the features from aerial images. Recently, deep learning-based algorithms introduced and the outcomes of these algorithms are robust for such kind of applications in the area of computer vision. But accuracy of these algorithms is not optimized in aerial images because the deep learning algorithm required a huge amount of data to train the machine and the size of the object in aerial images is also too small. All these factors affecting the efficiency of the real-time device. This paper provides a brief description of traditional algorithms as well as machine learning and deep learning concepts to identifying the object through aerial images. The study has shown the comprehensive analysis of benchmark datasets and their parameters and corresponding challenges used by researchers and scientists in the area of object detection/tracking through aerial images
基于航空图像的车辆检测研究:各种挑战、问题和应用
如今,由于安全方面的考虑,在国家以及州/城市边境进行车辆检测和计数,已经通过航空图像变得流行起来。它将在减少城市和国家边境的各种犯罪(绑架儿童、毒品/酒精走私、交通不当、武器走私、性行为不当和与国家有关的犯罪等)方面发挥至关重要的作用。车辆检测和计数还有各种其他应用,如交通管理、停车分配、跟踪山区救援车辆、数字水印、收费广场车辆跟踪和城市规划等。然而,由于背景复杂、车辆体积小、其他视觉外观物体相似、距离远等原因,车辆检测和计数任务非常具有挑战性和难度。目前,传统的方法引入了几种鲁棒算法,但在提取航拍图像特征时存在一定的局限性。近年来,在计算机视觉领域引入了基于深度学习的算法,这些算法的结果对于这类应用具有鲁棒性。但由于深度学习算法需要大量的数据来训练机器,并且航拍图像中物体的尺寸也太小,这些算法的精度并没有得到优化。这些因素都影响着实时设备的效率。本文简要介绍了通过航拍图像识别目标的传统算法以及机器学习和深度学习概念。该研究展示了研究人员和科学家在通过航空图像进行目标检测/跟踪领域使用的基准数据集及其参数和相应挑战的综合分析
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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