Government Technology

    Digital Communities
    Industry Members

  • Click sponsor logos for whitepapers, case studies, and best practices.
  • McAfee
  • Net App
  • Perceptive Software

System Estimates Geographic Location of Photos



Locating Photos by GPS

July 3, 2008 By

 

Researchers at Carnegie Mellon University have devised the first computerized method that can analyze a single photograph and determine where in the world the image likely was taken. It's a feat made possible by searching through millions of GPS-tagged images in the Flickr online photo collection.

The IM2GPS algorithm developed by computer science graduate student James Hays and Alexei A. Efros, assistant professor of computer science and robotics, doesn't attempt to scan a photo for location clues, such as types of clothing, the language on street signs, or specific types of vegetation, as a person might do. Rather, it analyzes the composition of the photo, notes how textures and colors are distributed and records the number and orientation of lines in the photo. It then searches Flickr for photos that are similar in appearance.

"We're not asking the computer to tell us what is depicted in the photo but to find other photos that look like it," Efros said. "It was surprising to us how effective this approach proved to be. Who would have guessed that similarity in overall image appearance would correlate to geographic proximity so well?"

Hays and Efros found they could accurately geolocate the images within 200 kilometers for 16 percent of more than 200 photos in their test set -- up to 30 times better than chance. And even if their algorithm failed to identify the specific location, they often found that it could narrow the possibilities, such as by identifying the locale as a beach or a desert.

"It seems there's not as much ambiguity in the visual world as you might guess," said Hays, who presented the research at the IEEE Computer Society Conference on Computer Vision and Pattern Recognition last month in Anchorage, Alaska. "Estimating geographic information from images is a difficult, but very much a doable, computer vision problem."

Identifying the locale of a photo could enhance image search techniques, making them less dependent on captions or associated text. A computer system for geolocating photos could be useful in finding family photos from a specific trip and in some forensic applications. Determining the location of photos also makes it possible to combine them with geographic data bases related to climate, population density, vegetation, topography and land use.

Knowing the locale also can aid in such computer vision tasks as object identification, Hays said. If a computer recognizes that a photo likely was taken in Japan, for instance, the computer will have a better idea of what a taxicab should look like.

Hays said many online photos have some sort of geographic label, but these human descriptions can often be incorrect, or overly broad, such as a photo of the Grand Canyon labeled "U.S." The growing number of online photos that have GPS tags, by contrast, are unambiguous regarding their location, even though many are photos of rooms, people or events such as birthday parties that are useless for geolocation tasks. By using photos with both geographic keywords and GPS coordinates, Hays and Efros were able to find more than six million photos that were useful and accurately geolocated.

The IM2GPS algorithm readily located photographs of such landmarks as the Cathedral of Notre Dame in Paris. More surprisingly, it was able to recognize that a narrow street in Barcelona was typical of Mediterranean villages, rather than an American alleyway.

But some odd matches also occurred. The architecturally unique Sydney Opera House seemed to the computer to be similar to a hotel in Mississippi as well as a bridge in London. A shot of the Eiffel Tower at dusk was matched to other Eiffel Tower shots, but also to San Francisco's Coit Tower and New York's Statue of Liberty, both shot at dusk.

One reason for this confusion, Hays explained, is that the algorithm is not designed to recognize specific objects so much as it is to recognize geographic areas. For instance, an image of Utah's Monument Valley caused the IM2GPS algorithm to successfully retrieve a number of other images from Monument Valley and the American Southwest, rather than images of a specific rock formation.

 


| More

Comments


Add Your Comment

You are solely responsible for the content of your comments. We reserve the right to remove comments that are considered profane, vulgar, obscene, factually inaccurate, off-topic, or considered a personal attack.

In Our Library

White Papers | Exclusives Reports | Webinar Archives | Best Practices and Case Studies
Living in a Smart City: Chattanooga, TN
The only one Gigabit broadband service in the United States for residential and business customers is now available citywide in Chattanooga, Tennessee. Let's meet people who live and work in one of the smartest city: what services do they embrace today, what is their vision for the future, and what kind of culture do they think makes this all possible and what's their definition of a smart city.
Creating Your Smart Grid: A How-To Guide
The smart grid promises to bring unprecedented opportunities for both utilities and consumers, improving safety, reliability, efficiency and security. The latest communications technologies will greatly improve awareness of grid conditions – in real time – for better control, management and decision-making.
WHITEPAPER: D Block Spectrum Act and the FirstNet Broadband Network. What does it all mean?
On Feb 22, 2012, the Middle Class Tax Relief and Job Creation Act of 2012 was enacted into law. This law will ensure the establishment of a nationwide, interoperable public safety broadband network in every state and territory in the U.S. Learn about the new law and what you can do to prepare for it now.
View All

Digital Communities members get access to our collaboration task forces

427 Members

77 Discussions

84 Files

Latest members Become a member

Digital Communities members get access to our collaboration task forces

669 Members

145 Discussions

150 Files

Latest members Become a member

 


Featured White Papers & Reports

The Future of the Desktop in Government

Until recently, there was no alternative to the familiar desktop computer, and its expensive upgrades and maintenance requirements. For cash-strapped local governments, the desktop computer is quickly becoming an unsustainable option for future progress. Now, a technology known as virtual desktop infrastructure (VDI) offers an alternative. It can be significantly more affordable than buying individual computers for every employee, and it provides similar capability. This paper shows how VDI is the future of the desktop and is a game-changer for local governments.


View Full Library

Events

GTC East

Don't miss this opportunity to see the latest in digital government solutions, keep abreast of current policy issues and network with key government executives, technologists and industry specialists.

View All Events