Autonomous Exploration Incorporated
- View government funding actions
- Andover, MA 018103234
- Estimated Number of Employees: 2
- Estimated Annual Receipts: $33,000
Sampling of Federal Government Funding Actions/Set Asides
In order by amount of set aside monies.
- $50,000 - Wednesday the 10th of September 2014
National Aeronautics And Space Administration
NASA SHARED SERVICES CENTER
THE KEY INNOVATION OF THIS PROJECT IS THE APPLICATION OF ADVANCED BAYESIAN METHODS TO INTEGRATE REAL-TIME DENSE STEREO VISION AND HIGH-SPEED OPTICAL FLOW WITH AN INERTIAL MEASUREMENT UNIT (IMU) TO PRODUCE A HIGHLY ACCURATE PLANETARY ROVER NAVIGATION SYSTEM. THE SOFTWARE DEVELOPED IN THIS PROJECT LEVERAGES CURRENT COMPUTING TECHNOLOGY TO IMPLEMENT ADVANCED VISUAL ODOMETRY (VO) METHODS THAT WILL ACCURATELY TRACK MUCH FASTER ROVER MOVEMENTS. OUR FULLY BAYESIAN APPROACH TO VO WILL UTILIZES INFORMATION FROM THE IMAGES THAN PREVIOUS METHODS ARE CAPABLE OF USING. OUR BAYESIAN VO DOES NOT EXPLICITLY SELECT FEATURES TO TRACK. INSTEAD IT IMPLICITLY DETERMINES WHAT CAN BE LEARNED FROM EACH IMAGE PIXEL AND WEIGHTS THE INFORMATION ACCORDINGLY. THIS MEANS THAT OUR APPROACH CAN WORK WITH IMAGES THAT HAVE NO DISTINCT CORNERS, WHICH CAN BE A SIGNIFICANT ADVANTAGE WITH LOW CONTRAST IMAGES FROM PERMANENTLY SHADOWED AREAS. WE HAVE SHOWN THAT THE ERROR CHARACTERISTICS OF THE VISUAL PROCESSING ARE COMPLEMENTARY TO THE ERROR CHARACTERISTICS OF A LOW-COST IMU. THEREFORE, THE COMBINATION OF THE TWO CAN PROVIDE HIGHLY ACCURATE NAVIGATION. - $200,000 - Wednesday the 10th of September 2014
National Aeronautics And Space Administration
NASA SHARED SERVICES CENTER
THE KEY INNOVATION OF THIS PROJECT IS THE APPLICATION OF ADVANCED BAYESIAN METHODS TO INTEGRATE REAL-TIME DENSE STEREO VISION AND HIGH-SPEED OPTICAL FLOW WITH AN INERTIAL MEASUREMENT UNIT (IMU) TO PRODUCE A HIGHLY ACCURATE PLANETARY ROVER NAVIGATION SYSTEM. THE SOFTWARE DEVELOPED IN THIS PROJECT LEVERAGES CURRENT COMPUTING TECHNOLOGY TO IMPLEMENT ADVANCED VISUAL ODOMETRY (VO) METHODS THAT WILL ACCURATELY TRACK MUCH FASTER ROVER MOVEMENTS. OUR FULLY BAYESIAN APPROACH TO VO WILL UTILIZES INFORMATION FROM THE IMAGES THAN PREVIOUS METHODS ARE CAPABLE OF USING. OUR BAYESIAN VO DOES NOT EXPLICITLY SELECT FEATURES TO TRACK. INSTEAD IT IMPLICITLY DETERMINES WHAT CAN BE LEARNED FROM EACH IMAGE PIXEL AND WEIGHTS THE INFORMATION ACCORDINGLY. THIS MEANS THAT OUR APPROACH CAN WORK WITH IMAGES THAT HAVE NO DISTINCT CORNERS, WHICH CAN BE A SIGNIFICANT ADVANTAGE WITH LOW CONTRAST IMAGES FROM PERMANENTLY SHADOWED AREAS. WE HAVE SHOWN THAT THE ERROR CHARACTERISTICS OF THE VISUAL PROCESSING ARE COMPLEMENTARY TO THE ERROR CHARACTERISTICS OF A LOW-COST IMU. THEREFORE, THE COMBINATION OF THE TWO CAN PROVIDE HIGHLY ACCURATE NAVIGATION.
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