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EGO-Planner: An ESDF-Free Gradient-Based Local Planner for Quadrotors

Xin Zhou, Zhepei Wang, Hongkai Ye, Chao Xu, Fei Gao

2020IEEE Robotics and Automation Letters460 citationsDOI

Abstract

Gradient-based planners are widely used for quadrotor local planning, in which a Euclidean Signed Distance Field (ESDF) is crucial for evaluating gradient magnitude and direction. Nevertheless, computing such a field has much redundancy since the trajectory optimization procedure only covers a very limited subspace of the ESDF updating range. In this letter, an ESDF-free gradient-based planning framework is proposed, which significantly reduces computation time. The main improvement is that the collision term in penalty function is formulated by comparing the colliding trajectory with a collision-free guiding path. The resulting obstacle information will be stored only if the trajectory hits new obstacles, making the planner only extract necessary obstacle information. Then, we lengthen the time allocation if dynamical feasibility is violated. An anisotropic curve fitting algorithm is introduced to adjust higher order derivatives of the trajectory while maintaining the original shape. Benchmark comparisons and real-world experiments verify its robustness and high-performance. The source code is released as ros packages.

Topics & Concepts

ObstacleComputer scienceTrajectoryRobustness (evolution)ComputationMathematical optimizationBenchmark (surveying)Motion planningPlannerRedundancy (engineering)Euclidean distanceFunction (biology)Euclidean geometryAlgorithmRobotControl theory (sociology)MathematicsArtificial intelligenceGeometryGeodesyPhysicsLawBiochemistryBiologyPolitical scienceControl (management)GeneAstronomyEvolutionary biologyGeographyChemistryOperating systemRobotic Path Planning AlgorithmsRobotics and Sensor-Based LocalizationGuidance and Control Systems
EGO-Planner: An ESDF-Free Gradient-Based Local Planner for Quadrotors | Litcius