Efficient Vehicle Counting by Eliminating Identical Vehicles in UAV aerial videos

Ashutosh Holla B, M. M, Ujjwal Verma, R. Pai
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引用次数: 8

Abstract

Traffic surveillance using Unmanned Aerial Vehicles (UAV‘s) has gained a lot of attraction in civilian applications and remote sensing tasks. Thanks to its high mobility and large field of view and ability to cover regions at different altitudes UAVs have made a mark in recent years for surveillance. The primary purpose of UAV in traffic surveillance is to monitor the daily activities in the busy traffic areas and report the abnormal activities which may take place. In recent years, many gated campuses such as educational institutions, organizations, shopping malls, etc. have taken steps to keep a track of vehicles trespassing within its vicinity. Vehicle counting is one of the monitoring tasks performed in surveillance to estimate the density of vehicles in an event or areas where traffic congestion is common. In this paper, a vehicle counting framework is proposed to eliminate the problem of redundant vehicle information count when a vehicle has appeared in successive frames of UAV videos. This work demonstrates that the comparison of concatenated three features vectors (Histogram of Oriented Gradients, Local Binary Pattern, and mean RGB value) can be used to recognize identical vehicles in UAV aerial videos.
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无人机航拍视频中消除相同车辆的高效车辆计数
利用无人机进行交通监控在民用和遥感任务中得到了广泛的应用。由于其高机动性和大视场以及覆盖不同高度区域的能力,无人机近年来在监视领域取得了长足的进步。无人机在交通监控中的主要目的是监控交通繁忙区域的日常活动,并报告可能发生的异常活动。近年来,许多封闭的校园,如教育机构、组织、购物中心等,都采取了措施来跟踪车辆侵入其附近。车辆计数是一种监测任务,用于估计在交通拥挤的事件或地区的车辆密度。针对无人机视频连续帧中出现车辆信息时产生的冗余计数问题,提出了一种车辆计数框架。本研究表明,将三个特征向量(方向梯度直方图、局部二值模式和平均RGB值)串联起来进行比较,可以用于识别无人机航拍视频中的相同车辆。
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