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Circle-Marker-Based Machine Learning Positioning Algorithm with Single General-Purpose Camera

机译:基于单个通用摄像机的基于圆形标记的机器学习定位算法

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Indoor positioning is an important issue in warehousing. Nowadays, efficient automated guided vehicles (AGVs) with QR codes positioning system are popular in cargo sorting. The main disadvantage of them is low space utilization. Therefore, Circle-Marker-Based Machine Learning Positioning Algorithm (CMLPA), a monocular positioning method, is presented. Contrast with many systems focusing on eliminating the influences of deformation, CMLPA utilizes it to predict the distance and the position based on circle-markers with gradient boosting decision trees algorithm. The experimental result demonstrates that the average absolute error of CMLPA is low to 0.34 cm in 2 m*2m site while the maximum error is 4 cm. Thus, CMLPA shows great potential in storing field.
机译:室内定位是仓储中的重要问题。如今,带有QR码定位系统的高效自动导引车(AGV)在货物分拣中很受欢迎。它们的主要缺点是空间利用率低。因此,提出了一种基于单圈定位的基于圆形标记的机器学习定位算法(CMLPA)。与许多致力于消除变形影响的系统相反,CMLPA利用它来基于带有梯度增强决策树算法的圆形标记来预测距离和位置。实验结果表明,CMLPA在2 m * 2m位置的平均绝对误差低至0.34 cm,而最大误差为4 cm。因此,CMLPA在存储领域具有巨大的潜力。

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