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An Innovative Robotics Stowing Strategy For Inventory Replenishment In Automated Storage And Retrieval System

机译:自动存储和检索系统中库存补货的创新机器人技术

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Modern automated warehouses are equipped with one or many expensive and sophisticated equipment, such as palletizing robots, automated guided vehicles as well as an automated storage and retrieval system (AS/RS). These equipment are operated manually at many levels. These manual interruptions are accompanied by disadvantages of slow storage and retrieval speed, high operating costs and high frequency of errors in the operations. This paper presents an approach for efficient robotic stowing of items for inventory replenishment in a storage system. The objective is to enable a robotic arm system to stow items into a storage bin system and automatically generate a file to indicate which bin each object is stowed to. This would require a robust object recognition imbued with recognition history such that a previously recognized object is remembered as being stowed, even if it has been obscured by other objects subsequently during the task. A feature confidence aggregation strategy has been implemented to analyze a sequence of images containing a number of objects that are added to the storage system sequentially. The strategy is based on a weighted aggregation of ranked machine-learned classification scores and feature-matching recognition scores. This method is able to produce a high recognition rate and has been applied in the Amazon Robotic Challenge 2017 by Team Nanyang.
机译:现代的自动化仓库配备有一个或多个昂贵且复杂的设备,例如码垛机器人,自动导引车以及自动存储和检索系统(AS / RS)。这些设备可以在多个级别上手动操作。这些手动中断的缺点是存储和检索速度慢,操作成本高以及操作错误的频率高。本文提出了一种在存储系统中有效自动存储物品以补充库存的方法。目的是使机械臂系统可以将物品存放到存储箱系统中,并自动生成文件以指示每个对象存放到哪个箱中。这将需要具有识别历史的鲁棒的对象识别,从而即使先前识别的对象在任务期间随后被其他对象遮挡,也可以记住该对象被收藏。已经实现了特征置信度聚合策略,以分析包含一系列对象的图像序列,这些对象被顺序添加到存储系统中。该策略基于排名机器学习的分类得分和特征匹配识别得分的加权汇总。此方法能够产生较高的识别率,并且已被Nanyang团队应用于2017年的Amazon Robotic Challenge。

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