Subscribe free to our newsletters via your
. 24/7 Space News .




ROBO SPACE
Better robot vision
by Larry Hardesty for MIT News
Boston MA (SPX) Oct 08, 2013


A statistical construct called the Bingham distribution enables a new algorithm to identify an object's orientation using far fewer data points (red and purple circles) than previous algorithms required. Images courtesy of the researchers.

Object recognition is one of the most widely studied problems in computer vision. But a robot that manipulates objects in the world needs to do more than just recognize them; it also needs to understand their orientation. Is that mug right-side up or upside-down? And which direction is its handle facing?

To improve robots' ability to gauge object orientation, Jared Glover, a graduate student in MIT's Department of Electrical Engineering and Computer Science, is exploiting a statistical construct called the Bingham distribution.

In a paper they're presenting in November at the International Conference on Intelligent Robots and Systems, Glover and MIT alumna Sanja Popovic '12, MEng '13, who is now at Google, describes a new robot-vision algorithm, based on the Bingham distribution, that is 15 percent better than its best competitor at identifying familiar objects in cluttered scenes.

That algorithm, however, is for analyzing high-quality visual data in familiar settings. Because the Bingham distribution is a tool for reasoning probabilistically, it promises even greater advantages in contexts where information is patchy or unreliable.

In ongoing work, Glover is using Bingham distributions to analyze the orientation of pingpong balls in flight, as part of a broader project to teach robots to play pingpong. In cases where visual information is particularly poor, his algorithm offers an improvement of more than 50 percent over the best alternatives.

"Alignment is key to many problems in robotics, from object-detection and tracking to mapping," Glover says.

"And ambiguity is really the central challenge to getting good alignments in highly cluttered scenes, like inside a refrigerator or in a drawer. That's why the Bingham distribution seems to be a useful tool, because it allows the algorithm to get more information out of each ambiguous, local feature."

Because Bingham distributions are so central to his work, Glover has also developed a suite of software tools that greatly speed up calculations involving them. The software is freely available online, for other researchers to use.

In the rotation
One reason the Bingham distribution is so useful for robot vision is that it provides a way to combine information from different sources. Generally, determining an object's orientation entails trying to superimpose a geometric model of the object over visual data captured by a camera - in the case of Glover's work, a Microsoft Kinect camera, which captures a 2-D color image together with information about the distance of the color patches.

For simplicity's sake, imagine that the object is a tetrahedron, and the geometric model consists of four points marking the tetrahedron's four corners. Imagine, too, that software has identified four locations in an image where color or depth values change abruptly - likely to be the corners of an object. Is it a tetrahedron?

The problem, then, boils down to taking two sets of points - the model and the object - and determining whether one can be superimposed on the other. Most algorithms, Glover's included, will take a first stab at aligning the points. In the case of the tetrahedron, assume that, after that provisional alignment, every point in the model is near a point in the object, but not perfectly coincident with it.

If both sets of points in fact describe the same object, then they can be aligned by rotating one of them around the right axis. For any given pair of points - one from the model and one from the object - it's possible to calculate the probability that rotating one point by a particular angle around a particular axis will align it with the other. The problem is that the same rotation might move other pairs of points farther away from each other.

Glover was able to show, however, that the rotation probabilities for any given pair of points can be described as a Bingham distribution, which means that they can be combined into a single, cumulative Bingham distribution. That allows Glover and Popovic's algorithm to explore possible rotations in a principled way, quickly converging on the one that provides the best fit between points.

Big umbrella
Moreover, in the same way that the Bingham distribution can combine the probabilities for each pair of points into a single probability, it can also incorporate probabilities from other sources of information - such as estimates of the curvature of objects' surfaces. The current version of Glover and Popovic's algorithm integrates point-rotation probabilities with several other such probabilities.

In experiments involving visual data about particularly cluttered scenes - depicting the kinds of environments in which a household robot would operate - Glover's algorithm had about the same false-positive rate as the best existing algorithm: About 84 percent of its object identifications were correct, versus 83 percent for the competition.

But it was able to identify a significantly higher percentage of the objects in the scenes - 73 percent versus 64 percent. Glover argues that that difference is because of his algorithm's better ability to determine object orientations.

He also believes that additional sources of information could improve the algorithm's performance even further. For instance, the Bingham distribution could also incorporate statistical information about particular objects - that, say, a coffee cup may be upside-down or right-side up, but it will very rarely be found at a diagonal angle.

Indeed, it's because of the Bingham distribution's flexibility that Glover considers it such a promising tool for robotics research. "You can spend your whole PhD programming a robot to find tables and chairs and cups and things like that, but there aren't really a lot of general-purpose tools," Glover says.

"With bigger problems, like estimating relationships between objects and their attributes and dealing with things that are somewhat ambiguous, we're really not anywhere near where we need to be. And until we can do that, I really think that robots are going to be very limited."

.


Related Links
Massachusetts Institute Of Technology
All about the robots on Earth and beyond!






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








ROBO SPACE
Surprisingly simple scheme for self-assembling robots
Boston MA (SPX) Oct 08, 2013
In 2011, when an MIT senior named John Romanishin proposed a new design for modular robots to his robotics professor, Daniela Rus, she said, "That can't be done." Two years later, Rus showed her colleague Hod Lipson, a robotics researcher at Cornell University, a video of prototype robots, based on Romanishin's design, in action. "That can't be done," Lipson said. In November, Romani ... read more


ROBO SPACE
Russia could build manned lunar base

China unveils its first and unnamed moon rover

Mission to moon will boost research and awareness

Mighty Eagle Improves Autonomous Landing Software With Successful Flight

ROBO SPACE
Making Martian clouds on Earth

NASA Mars mission escapes government shutdown, will launch

European rover meant for Mars to undergo earthly desert test

First ARCA flight in the ExoMars Program completed successfully

ROBO SPACE
Naval Institute History Conference: From Mercury to the Shuttle

Samsung to break ground at US research center

Non-Orbiting Space Junk

Paper written as science hoax published by 157 science journals

ROBO SPACE
NASA ban on Chinese scientists 'inaccurate': lawmaker

What's Next, Tiangong?

Onward and upward as China marks 10 years of manned spaceflight

Chinese VP stresses peaceful use of space

ROBO SPACE
Aerojet Rocketdyne Thrusters Help Cygnus Spacecraft Berth at the International Space Station

First CASIS Funded Payloads Berthed to the ISS

Unmanned cargo ship docks with orbiting Space Station

New space crew joins ISS on Olympic torch mission

ROBO SPACE
SES-8 Arrives At Cape Canaveral For SpaceX Falcon 9 Launch

Spaceport Colorado and S3 Sign Memorandum of Understanding

Milky Way-mapping Gaia receives its sunshield

Arianespace's next Ariane 5 mission will serve two key customers: SES and HISPASAT

ROBO SPACE
Researchers Find that Bright Nearby Double Star Fomalhaut Is Actually a Triple

NASA Space Telescopes Find Patchy Clouds On Exotic World

Blurring the lines between stars and planets

Kepler Finds First Signs of Other Earths

ROBO SPACE
Ultrasound system gives virtual feeling of objects in mid-air

Himawari and Mitsubishi Electric Complete Facilities For Weather Satellite Ops

Disney Research develops algorithm for rendering 3-D tactile features on touch surfaces

World's Largest Solar Sail, Sunjammer, Completes Test




The content herein, unless otherwise known to be public domain, are Copyright 1995-2014 - Space Media Network. AFP, UPI and IANS news wire stories are copyright Agence France-Presse, United Press International and Indo-Asia News Service. 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