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Today, many industrial tasks are not automated and still require human intervention. One of these tasks is the unloading of oversea containers. After the end of transportation to the sorting center, the containers must be unloaded manually for further sending the parcels to the recipients. A robot-based automatic unloading of containers was therefore researched. However, the promising results of the system developed in these projects could not be commercialized due to problems with its reliability. Mechanical, algorithmic or other limitations are possible causes of the observed errors. To analyze errors, it is necessary to evaluate the results of the robot’s work without complicating the existing system by adding new sensors to it. This paper presents a reference system based on machine learning to evaluate the robotics grasps of parcels. It analyzes two states of the container: before and after picking up one box. The states are represented as a point cloud received from a laser scanner. The proposed system evaluates the success of transferring a box from an overseas container to the sorting line by supervised learning using convolutional neural networks (CNN) and manual labeling of the data. The process of obtaining a working model using a hyperband model search with a maximum classification error of 3.9 % is also described.
Dieser Beitrag stellt eine Methodik zur echtzeitnahen Erfassung und Dokumentation von Treibhausgasemissionen in komplexen Wertschöpfungsnetzwerken vor. Die Methodik orientiert sich konzeptionell an relevanten Normen und Ansätzen im Kontext der Treibhausgasbilanzierung. Sie gestattet eine systematische produktionssynchrone, (teil-)autonome Erfassung der Treibhausgasemissionen von Produktions- und Logistikprozessen auf Basis produktbezogener Verwaltungsschalen.