支持失踪人员多面搜索的分层组织计算机视觉

Arturo Miguel Russell Bernal, Jane Cleland-Huang
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引用次数: 4

摘要

失踪人口搜索通常是由一个人的描述开始的,包括他们的年龄、种族、服装和性别,可能还会有一张照片。无人机系统(sUAS)具有计算机视觉(CV)功能,可用于快速搜索区域以找到失踪者;然而,当有一群人在场时,搜寻任务就困难得多,只有失踪人口报告中描述的人才能被识别出来。在潜在有限的sUAS资源上执行这项任务尤其具有挑战性。因此,我们提出AirSight作为一种新模型,它分层结合了多个CV模型,利用了机载和非机载计算能力,并使人类参与到搜索中来。为了便于说明,我们使用AirSight来展示从航拍视频中提取的人物图像如何与人物的基本描述相匹配。最后,作为一篇正在进行的论文,我们描述了在构建部分遮挡人群的空中数据集和在我们的sUAS上物理部署AirSight方面正在进行的努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchically Organized Computer Vision in Support of Multi-Faceted Search for Missing Persons
Missing person searches are typically initiated with a description of a person that includes their age, race, clothing, and gender, possibly supported by a photo. Unmanned Aerial Systems (sUAS) imbued with Computer Vision (CV) capabilities, can be deployed to quickly search an area to find the missing person; however, the search task is far more difficult when a crowd of people is present, and only the person described in the missing person report must be identified. It is particularly challenging to perform this task on the potentially limited resources of an sUAS. We therefore propose AirSight, as a new model that hierarchically combines multiple CV models, exploits both onboard and off-board computing capabilities, and engages humans interactively in the search. For illustrative purposes, we use AirSight to show how a person's image, extracted from an aerial video can be matched to a basic description of the person. Finally, as a work-in-progress paper, we describe ongoing efforts in building an aerial dataset of partially occluded people and physically deploying AirSight on our sUAS.
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