Title :
A parallel implementation of a multisensor feature-based range-estimation method
Author :
Suorsa, Raymond E. ; Sridhar, Banavar
Author_Institution :
NASA Ames Res. Center, Moffett Field, CA, USA
fDate :
12/1/1994 12:00:00 AM
Abstract :
There are many proposed vision based methods to perform obstacle detection and avoidance for autonomous or semi-autonomous vehicles. A system capable of supporting autonomous helicopter navigation will need to extract obstacle information from imagery at rates varying from ten images per second to thirty or more images per second depending on the vehicle speed. This paper describes an efficient and flexible parallel implementation of a multisensor feature-based range-estimation algorithm, targeted for automated helicopter flight. The algorithm can track hundreds of features in multiple image sensors using an extended Kalman filter to estimate the feature´s location in a master sensor coordinate frame. The feature-tracking algorithm has reached relative maturity in the laboratory and is now being ported to several real-time architectures to support autonomous helicopter navigation research, The focus of this paper is not the core theory of the vision algorithm itself, but those aspects of it that affect the method of parallelization. The performance of the parallel algorithm is analyzed, with respect to three load balancing schemes, on both a distributed-memory and shared-memory parallel computer
Keywords :
Kalman filters; aircraft navigation; distance measurement; helicopters; image sequences; parallel processing; autonomous helicopter navigation; autonomous vehicles; distributed-memory; extended Kalman filter; load balancing schemes; master sensor coordinate frame; multisensor feature-based range-estimation method; obstacle avoidance; obstacle detection; parallel computer; parallel implementation; real-time architectures; semi-autonomous vehicles; shared-memory; Aircraft navigation; Data mining; Helicopters; Image sensors; Laboratories; Mobile robots; Remotely operated vehicles; Sensor phenomena and characterization; Target tracking; Vehicle detection;
Journal_Title :
Robotics and Automation, IEEE Transactions on