Abstract

The drone has played an important role in security and surveillance. However, due to the limited computing power and energy resources, more efficient systems are required for surveillance tasks. In this paper, we address detection and tracking of moving vehicles with a small drone. A moving object detection scheme has been developed based on frame registration and subtraction followed by morphological filtering and false alarm removing. The center position of the detected object area is the input to the tracking target as a measurement. The Kalman filter estimates the position and velocity of the target based on the measurement nearest to the state prediction. We propose a new data association scheme for multiple measurements on a single target. This track association method consists of the hypothesis testing between two tracks and track fusion through track selection and termination. We reduce redundant tracks on the same target and maintain the track with the least estimation error. In the experiment, drones flying at an altitude of 150 m captured two videos in an urban environment. There are a total of 9 and 23 moving vehicles in each video; the detection rates are 92% and 89%, respectively. The number of valid tracks is significantly reduced from 13 to 10 and 56 to 26 in the first and the second video, respectively. In the first video, the average position RMSE of two merged tracks are improved by 83.6% when only the fused states are considered. In the second video, the average position and velocity RMSE are 1.21 m and 1.97 m/s, showing the robustness of the proposed system.

Highlights

  • The use of a small unmanned aerial vehicle (UAV) or drone is increasing in various applications [1]

  • The drones flew at the height of m in a straight line changed direction once in Video 2

  • The coordinates of the frame were compensated for, and the moving objects were detected based on the frame subtraction

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Summary

Introduction

The use of a small unmanned aerial vehicle (UAV) or drone is increasing in various applications [1]. Aerial video surveillance is of particular interest among the applications [2]. Multirotor drones can hover or fly as programmed while capturing video from a distance [3]. This capture is cost effective and does not require highly trained personnel. The limited computational power of a small drone is an important factor that must be considered. The coordinates change as the surveillance coverage is shifted

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