Title: Querying Geo-Tagged Videos for Vision Applications using Spatial Metadata
Authors: Cai, YH; Lu, Y; Kim, SH; Nocera, L; Shahabi, C
Author Full Names: Cai, Yinghao; Lu, Ying; Kim, Seon Ho; Nocera, Luciano; Shahabi, Cyrus
Source: EURASIP JOURNAL ON IMAGE AND VIDEO PROCESSING, 10.1186/s13640-017-0165-6 FEB 23 2017
Language: English
Abstract: In this paper, we propose a novel geospatial image and video filtering tool (GIFT) to select the most relevant input images and videos for computer vision applications with geo-tagged mobile videos. GIFT tightly couples mobile media content and their geospatial metadata for fine granularity video manipulation in the spatial and temporal domain and intelligently indexes field of views (FOVs) to deal with large volumes of data. To demonstrate the effectiveness of GIFT, we introduce an end-to-end application that utilizes mobile videos to achieve persistent target tracking over large space and time. Our experimental results show promising performance of vision applications with GIFT in terms of lower communication load, improved efficiency, accuracy, and scalability when compared with baseline approaches which do not fully utilize geospatial metadata.
ISSN: 1687-5281
Article Number: 19
IDS Number: EM0KG
Unique ID: WOS:000395006600001
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Y3D9011ME1 Querying Geo-Tagged Videos for Vision Applications using Spatial Metadata
Mar 31, 2017Author: