Drone, Aircraft and Bird Identification in Video Images Using Object Tracking and Residual Neural Networks

A. Fernandes, M. Baptista, Luís Fernandes, Paulo Chaves
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引用次数: 10

Abstract

As maritime smuggling is being combatted more effectively, the criminal “modus operandi” consists more frequently of using small aircraft and drones for drug transport. To address this issue, we report our efforts to develop a system capable of accurately tracking suspicious flying objects and identifying them on video streams. Our solution consists in coupling classical computer vision with deep learning to perform tracking and object detection. A discrete Kalman filter is used to predict the location of each object being tracked while the Hungarian algorithm is used to match objects between successive frames. Whenever a potential target is considered suspicious the input images are zoomed and fed into a deep learning pipeline that separates images into the classes aircraft, drones, birds or clouds. A literature survey indicates that this problem with important applications is yet to be fully explored.
利用目标跟踪和残差神经网络识别视频图像中的无人机、飞机和鸟类
随着打击海上走私活动日益有效,犯罪分子的“作案手法”越来越多地使用小型飞机和无人机运输毒品。为了解决这个问题,我们正在努力开发一种能够准确跟踪可疑飞行物并在视频流中识别它们的系统。我们的解决方案包括将经典计算机视觉与深度学习相结合,以执行跟踪和目标检测。离散卡尔曼滤波用于预测每个被跟踪对象的位置,匈牙利算法用于在连续帧之间匹配对象。只要一个潜在目标被认为是可疑的,输入的图像就会被放大并输入到一个深度学习管道中,该管道将图像分为飞机、无人机、鸟类或云。一项文献调查表明,这一具有重要应用的问题尚未得到充分探讨。
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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