
People
Abstract
Estimating geographic information from an image is an excellent, difficult high-level computer vision problem whose time has come. The emergence of vast amounts of geographically-calibrated image data is a great reason for computer vision to start looking globally — on the scale of the entire planet! In this paper, we propose a simple algorithm for estimating a distribution over geographic locations from a single image using a purely data-driven scene matching approach. For this task, we will leverage a dataset of over 6 million GPS-tagged images from the Internet. We represent the estimated image location as a probability distribution over the Earth’s surface. We quantitatively evaluate our approach in several geolocation tasks and demonstrate encouraging performance (up to 30 times better than chance). We show that geolocation estimates can provide the basis for numerous other image understanding tasks such as population density estimation, land cover estimation or urban/rural classification.
http://graphics.cs.cmu.edu/projects/im2gps/






最新评论
今天在电台上听到了,女主持人
学校有专门的tex模板, 本
喜欢,分享了!
新年快乐!
一般发国外期刊采用得到tex
我在的学校有一个博士维护的t
画图工具用matlab或者e
人工编号后期修改好麻烦;自动
真厉害。觉得这种Graphi
什么公司啊,丕子? 好久没