首页 /研究 /Enhancing Object Detection Performance Through Sensor Pose Definition with Bayesian Optimization
PERCEPTION

Enhancing Object Detection Performance Through Sensor Pose Definition with Bayesian Optimization

Loris Roveda, Marco Maroni, Lorenzo Mazzuchelli, Loris Praolini, Giuseppe Bucca, Dario Piga

发表年份
2021
引用次数
4

摘要

Robots equipped with vision systems at the end-effector provide a powerful combination in industrial contexts. While much attention is dedicated to machine vision algorithms, the optimization of the vision system pose is not properly addressed (to increase object detection performance). A complete pipeline for such optimization is proposed. To this aim, Bayesian Optimization is employed. A Franka EMIKA Panda robot has been used as a robotic platform, equipped at its end-effector with an Intel© RealSense D400. Achieved results show the high-fidelity reconstruction of the real working environment for the offline optimization (i.e., performed simulations), together with capabilities of the proposed Bayesian Optimization-based approach to defining the sensor pose in a limited number of experimental trials (50 maximum iterations has been considered).

关键词

Bayesian optimizationComputer sciencePipeline (software)Artificial intelligenceRobotObject detectionComputer visionBayesian probabilityObject (grammar)Robot end effector

相关论文

查看 PERCEPTION 分类全部论文