Author_Institution :
Robot Sensor & Human-Machine Interaction Lab., Inst. of Intell. Machines, Hefei, China
Abstract :
Data association is a fundamental problem in multisensor fusion, tracking, and localization. The joint compatibility test is commonly regarded as the true solution to the problem. However, traditional joint compatibility tests are computationally expensive, are sensitive to linearization errors, and require the knowledge of the full covariance matrix of state variables. The paper proposes a posterior-based joint compatibility test scheme to conquer the three problems mentioned above. The posterior-based test naturally separates the test of state variables from the test of observations. Therefore, through the introduction of the robot movement and proper approximation, the joint test process is sequentialized to the sum of individual tests; therefore, the test has O(n) complexity (compared with O(n2) for traditional tests), where n denotes the total number of related observations. At the same time, the sequentialized test neither requires the knowledge to the full covariance matrix of state variables nor is sensitive to linearization errors caused by poor pose estimates. The paper also shows how to apply the proposed method to various simultaneous localization and mapping (SLAM) algorithms. Theoretical analysis and experiments on both simulated data and popular datasets show the proposed method outperforms some classical algorithms, including sequential compatibility nearest neighbor (SCNN), random sample consensus (RANSAC), and joint compatibility branch and bound (JCBB), on precision, efficiency, and robustness.
Keywords :
SLAM (robots); approximation theory; computational complexity; covariance matrices; image fusion; mobile robots; object tracking; robot vision; statistical testing; tree searching; JCBB; RANSAC; SCNN; SLAM; full covariance matrix; joint compatibility branch-and-bound; linearization errors; multisensor fusion; multisensor localization; multisensor tracking; pose estimates; posterior based approximate joint compatibility test; random sample consensus; robot movement; robust data association; sequential compatibility nearest neighbor; simultaneous localization-and-mapping algorithms; state variables; Data association; joint compatibility test; localization; posterior distributions;