Marc Levoy, professor of Computer
Science and of Electrical Engineering and graduate student Andrew
Adams with the open source camera.
L.A. Cicero
Stanford photo scientists are out to reinvent digital
photography with the introduction of an open-source digital camera,
which will give programmers around the world the chance to create
software that will teach cameras new tricks.
If the technology catches on, camera performance will be no
longer be limited by the software that comes pre-installed by the
manufacturer. Virtually all the features of the Stanford camera
focus, exposure, shutter speed, flash, etc. are at the command of
software that can be created by inspired programmers anywhere. The
premise of the project is to build a camera that is open source,
said computer science professor Marc Levoy.
Computer science graduate student Andrew Adams, who helped design
the prototype of the Stanford camera (dubbed Frankencamera,)
imagines a future where consumers download applications to their
open-platform cameras the way Apple apps are downloaded to iPhones
today. When the cameras operating software is made available
publicly, perhaps a year from now, users will be able to
continuously improve it, along the open-source model of the Linux
operating system for computers or the Mozilla Firefox web
browser.
From there, the skys the limit. Programmers will have the freedom
to experiment with new ways of tuning the cameras response to light
and motion, adding their own algorithms to process the raw images
in innovative ways.
Frankencamera at minimal cost
Levoys plan is to develop and manufacture the Frankencamera as a
platform that will first be available at minimal cost to fellow
computational photography researchers. In the young field of
computational photography, which Levoy helped establish,
researchers use optics benches, imaging chips, computers and
software to develop techniques and algorithms to enhance and extend
photography. This work, however, is bound to the lab. Frankencamera
would give researchers the means to take their experiments into the
studios, the landscapes, and the stadiums.
For example, among the most mature ideas in the field of
computational photography is the idea of extending a cameras
dynamic range, or its ability to handle a wide range of lighting in
a single frame. The process of high-dynamic-range imaging is to
capture pictures of the same scene with different exposures and
then to combine them into a composite image in which every pixel is
optimally lit. Until now, this trick could be done only with images
in computers. Levoy wants cameras to do this right at the scene, on
demand. Although the algorithms are very well understood, no
commercial cameras do this today. But Frankencamera does.
Another algorithm that researchers have achieved in the lab, but no
commercial camera allows, is enhancing the resolution of videos
with high-resolution still photographs. While a camera is gathering
low-resolution video at 30 frames a second, it could also
periodically take a high-resolution still image. The extra
information in the still could then be recombined by an algorithm
into each video frame. Levoy and his students plan to implement
that on Frankencamera, too.
Yet another idea is to have the camera communicate with computers
on a network, such as a photo-hosting service on the Web. Imagine,
Levoy says, if the camera could analyze highly-rated pictures of a
subject in an online gallery before snapping the shutter for
another portrait of the same subject. The camera could then offer
advice (or just automatically decide) on the settings that will
best replicate the same skin tone or shading. By communicating with
the network, the camera could avoid taking a ghastly picture.
Of course users with Frankencameras would not be constrained by
what is already known. Theyd be free to discover and experiment
with all kinds of other operations that might yield innovative
results because theyd have total control.
"Some cameras have software development kits that let you hook up a
camera with a USB cable and tell it to set the exposure to this,
the shutter speed to that, and take a picture, but thats not what
were talking about," says Levoy. "What were talking about is, tell
it what to do on the next microsecond in a metering algorithm or an
autofocusing algorithm, or fire the flash, focus a little
differently and then fire the flash again things you cant program a
commercial camera to do."
Behind the lens cap
To create an open-source camera, Levoy and the group cobbled
together a number of different parts: the motherboard, per se, is a
Texas Instruments "system on a chip" running Linux with image and
general processors and a small LCD screen. The imaging chip is
taken from a Nokia N95 cell phone, and the lenses are off-the-shelf
Canon lenses, but they are combined with actuators to give the
camera its fine-tuned software control. The body is custom made at
Stanford. The project has benefited from the support of Nokia,
Adobe Systems, Kodak, and Hewlett-Packard. HP recently gave
graduate student David Jacobs a three-year fellowship to support
his work on the project. Kodak, meanwhile, supports student Eddy
Talvala.
Within about a year, after the camera is developed to his
satisfaction, Levoy hopes to have to have the funding and the
arrangements in place for an outside manufacturer to produce them
in quantity, ideally for less than $1,000. Levoy would then provide
them at cost to colleagues and their students at other
universities.
The son, grandson, and great-grandson of opticians, Levoy sees his
mission as not only advancing research in computational
photography, but also imbuing new students with enthusiasm for
technology. This spring he launched a course in digital photography
in which he integrated the science of optics and algorithms and the
history of photographys social significance with lessons in
photographic technique.
As many ideas as Levoys team may want to implement on the camera,
the real goal is to enable the broader community of photography
researchers and enthusiasts to contribute ideas the Stanford group
has not imagined. The success of Camera 2.0 will be measured by how
many new capabilities the community can add to collective
understanding of whats possible in photography.
David Orenstein is the associate communications director for the
School of Engineering.