. Space Travel News .




.
CHIP TECH
The faster-than-fast Fourier transform
by Larry Hardesty for MIT News
Boston MA (SPX) Jan 20, 2012

Graphic: Christine Daniloff.

The Fourier transform is one of the most fundamental concepts in the information sciences. It's a method for representing an irregular signal - such as the voltage fluctuations in the wire that connects an MP3 player to a loudspeaker - as a combination of pure frequencies. It's universal in signal processing, but it can also be used to compress image and audio files, solve differential equations and price stock options, among other things.

The reason the Fourier transform is so prevalent is an algorithm called the fast Fourier transform (FFT), devised in the mid-1960s, which made it practical to calculate Fourier transforms on the fly. Ever since the FFT was proposed, however, people have wondered whether an even faster algorithm could be found.

At the Association for Computing Machinery's Symposium on Discrete Algorithms (SODA) this week, a group of MIT researchers will present a new algorithm that, in a large range of practically important cases, improves on the fast Fourier transform.

Under some circumstances, the improvement can be dramatic - a tenfold increase in speed. The new algorithm could be particularly useful for image compression, enabling, say, smartphones to wirelessly transmit large video files without draining their batteries or consuming their monthly bandwidth allotments.

Like the FFT, the new algorithm works on digital signals. A digital signal is just a series of numbers - discrete samples of an analog signal, such as the sound of a musical instrument. The FFT takes a digital signal containing a certain number of samples and expresses it as the weighted sum of an equivalent number of frequencies.

"Weighted" means that some of those frequencies count more toward the total than others. Indeed, many of the frequencies may have such low weights that they can be safely disregarded. That's why the Fourier transform is useful for compression.

An eight-by-eight block of pixels can be thought of as a 64-sample signal, and thus as the sum of 64 different frequencies. But as the researchers point out in their new paper, empirical studies show that on average, 57 of those frequencies can be discarded with minimal loss of image quality.

Heavyweight division
Signals whose Fourier transforms include a relatively small number of heavily weighted frequencies are called "sparse." The new algorithm determines the weights of a signal's most heavily weighted frequencies; the sparser the signal, the greater the speedup the algorithm provides. Indeed, if the signal is sparse enough, the algorithm can simply sample it randomly rather than reading it in its entirety.

"In nature, most of the normal signals are sparse," says Dina Katabi, one of the developers of the new algorithm.

Consider, for instance, a recording of a piece of chamber music: The composite signal consists of only a few instruments each playing only one note at a time. A recording, on the other hand, of all possible instruments each playing all possible notes at once wouldn't be sparse - but neither would it be a signal that anyone cares about.

The new algorithm - which associate professor Katabi and professor Piotr Indyk, both of MIT's Computer Science and Artificial Intelligence Laboratory (CSAIL), developed together with their students Eric Price and Haitham Hassanieh - relies on two key ideas.

The first is to divide a signal into narrower slices of bandwidth, sized so that a slice will generally contain only one frequency with a heavy weight.

In signal processing, the basic tool for isolating particular frequencies is a filter. But filters tend to have blurry boundaries: One range of frequencies will pass through the filter more or less intact; frequencies just outside that range will be somewhat attenuated; frequencies outside that range will be attenuated still more; and so on, until you reach the frequencies that are filtered out almost perfectly.

If it so happens that the one frequency with a heavy weight is at the edge of the filter, however, it could end up so attenuated that it can't be identified. So the researchers' first contribution was to find a computationally efficient way to combine filters so that they overlap, ensuring that no frequencies inside the target range will be unduly attenuated, but that the boundaries between slices of spectrum are still fairly sharp.

Zeroing in
Once they've isolated a slice of spectrum, however, the researchers still have to identify the most heavily weighted frequency in that slice.

In the SODA paper, they do this by repeatedly cutting the slice of spectrum into smaller pieces and keeping only those in which most of the signal power is concentrated. But in an as-yet-unpublished paper, they describe a much more efficient technique, which borrows a signal-processing strategy from 4G cellular networks.

Frequencies are generally represented as up-and-down squiggles, but they can also be though of as oscillations; by sampling the same slice of bandwidth at different times, the researchers can determine where the dominant frequency is in its oscillatory cycle.

Two University of Michigan researchers - Anna Gilbert, a professor of mathematics, and Martin Strauss, an associate professor of mathematics and of electrical engineering and computer science - had previously proposed an algorithm that improved on the FFT for very sparse signals.

"Some of the previous work, including my own with Anna Gilbert and so on, would improve upon the fast Fourier transform algorithm, but only if the sparsity k" - the number of heavily weighted frequencies - "was considerably smaller than the input size n," Strauss says.

The MIT researchers' algorithm, however, "greatly expands the number of circumstances where one can beat the traditional FFT," Strauss says. "Even if that number k is starting to get close to n - to all of them being important - this algorithm still gives some improvement over FFT."

Related Links
MIT
Computer Chip Architecture, Technology and Manufacture
Nano Technology News From SpaceMart.com




.
.
Get Our Free Newsletters Via Email
...
Buy Advertising Editorial Enquiries



And it's 3... 2... 1... blastoff! Discover the thrill of a real-life rocket launch.



.

. Comment on this article via your Facebook, Yahoo, AOL, Hotmail login.

Share this article via these popular social media networks
del.icio.usdel.icio.us DiggDigg RedditReddit GoogleGoogle



CHIP TECH
10-second dance of electrons is step toward exotic new computers
Princeton NJ (SPX) Jan 18, 2012
An international team of researchers including scientists at Princeton University have achieved a 100-fold increase in the ability to maintain control the spins of electrons in a solid material, a key step in the development of ultrafast quantum computers. Until recently, the best attempts at such control lasted for only a fraction of a second. But researchers Stephen Lyon and Alexei Tyrys ... read more


CHIP TECH
SpaceX delays February flight to space stationl

Canaveral has busy 2012 launch schedule

China to launch Bolivian satellite in 2013: Chinese Ambassador

Ariane 5, Soyuz, Vega: Three world-changing launch vehicles

CHIP TECH
US may be behind Mars probe failure: Russia

Opportunity Targets Amboy Rock For Extra Study Ahead of Winter

Mars Express spots wrinkle ridges and grabens in Tempe Terra

Mars Science Lab Completes Biggest Maneuver On Route To Mars

CHIP TECH
Montana Students Pick Winning Names for Moon Craft

Students rename NASA moon probes Ebb and Flow

Lunar Reconnaissance Orbiter's LAMP reveals lunar surface features

Lunar orbiter spots moisture locations

CHIP TECH
SwRI researchers discover new evidence for complex molecules on Pluto's surface

New Horizons Becomes Closest Spacecraft to Approach Pluto

Pluto's Hidden Ocean

Is the Pluto System Dangerous?

CHIP TECH
Re-thinking an Alien World

Scientists Discover a Saturn-like Ring System Eclipsing a Sun-like Star

Planets around stars are the rule rather than the exception

Milky Way teaming with 'billions' of planets: study

CHIP TECH
Orion Drop Test - Jan. 06, 2012

Ball Aerospace Submits Cryogenic Propellant Storage Mission Concept to NASA

Fifty-Seven Student Rocket Teams to Take NASA Launch Challenge

Europe's Vega rocket launch set for early February

CHIP TECH
China Plans to Launch 30 Satellites in 2012

China launches Ziyuan III satellite

Spying on Tiangong

China's space ambitions ally glory with pragmatism

CHIP TECH
Dawn Wraps Up A Stunning Year Of Asteroid Exploration

Space Mountain Produces Terrestrial Meteorites

Christmas Comet Lovejoy Captured at Paranal

Dawn Obtains First Low Altitude Images of Vesta


.

The content herein, unless otherwise known to be public domain, are Copyright 1995-2012 - Space Media Network. AFP and UPI Wire Stories are copyright Agence France-Presse and United Press International. ESA Portal Reports are copyright European Space Agency. All NASA sourced material is public domain. Additional copyrights may apply in whole or part to other bona fide parties. Advertising does not imply endorsement,agreement or approval of any opinions, statements or information provided by Space Media Network on any Web page published or hosted by Space Media Network. Privacy Statement