失踪人员空中搜救任务的实时目标检测

Zsolt Domozi, D. Stojcsics, Abdallah Benhamida, M. Kozlovszky, A. Molnár
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引用次数: 8

摘要

本文介绍了一种基于单机系统、实时目标检测的解决方案,可以有效地方便无人机寻找失踪人员。挑战在于系统的实时实现和训练给定的深度神经网络以完成所需的任务。本文描述了目前使用的方法和程序,以及可能的工具。随后,介绍了搭载实时检测系统的自主飞行器系统。在关于实时检测的部分中,我们将详细介绍基于SSD拓扑的TensorFlow lite应用程序,该应用程序在移动电话上实现。我们还将介绍用于训练、测试和取得的结果的数据集。综上所述,召回率为65.4%,准确率为96.4%,除此之外,基于android的应用程序使用手机的摄像头,以11到17 FPS的速度实时执行图像分析,同时持续提供
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real time object detection for aerial search and rescue missions for missing persons
This paper introduces a solution to stand-alone system based, real-time object-detection, can efficiently facilitate the search for missing persons with an unmanned aerial vehicle. The challenge is the real-time implementation of the systems and training the given deep neural network for the desired task. The paper describes the methods and procedures currently in use, as well as the possible tools. Subsequently, the autonomous aircraft system, which carries a real-time detection system, is introduced. In the section about real-time detection, we will introduce the TensorFlow lite-based application, building on SSD topology, in detail, which was implemented on mobile phones. We will also introduce the dataset used for training, testing and the results achieved. In summary, the recall achieved is 65.4% and precision is 96.4%, besides the fact that the android-based application, using the phone’s camera, performs image analysis at a rate of 11 to 17 FPS in real-time, while continuously providing
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