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Fully-Automated Packaging Structure Recognition in Logistics Environments

机译:物流环境中的全自动包装结构识别

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Within a logistics supply chain, a large variety of transported goods need to be handled, recognized and checked at many different network points. Often, huge manual effort is involved in recognizing or verifying packet identity or packaging structure, for instance to check the delivery for completeness. We propose a method for complete automation of packaging structure recognition: Based on a single image, one or multiple transport units are localized and, for each of these transport units, the characteristics, the total number and the arrangement of its packaging units is recognized. Our algorithm is based on deep learning models, more precisely convolutional neural networks for instance segmentation in images, as well as computer vision methods and heuristic components. We use a custom data set of realistic logistics images for training and evaluation of our method. We show that the solution is capable of correctly recognizing the packaging structure in approximately 85% of our test cases, and even more (91%) when focusing on most common package types.
机译:在物流供应链中,需要在许多不同的网络点处处理,识别和检查各种各样的运输货物。通常,识别或验证数据包身份或包装结构需要大量的人工工作,例如检查交付的完整性。我们提出一种用于包装结构识别的完全自动化的方法:基于单个图像,定位一个或多个运输单元,并针对这些运输单元中的每个运输单元,识别其包装单元的特征,总数和布置。我们的算法基于深度学习模型,更准确地说是基于卷积神经网络(例如,图像分割)以及计算机视觉方法和启发式组件。我们使用现实物流图像的自定义数据集来训练和评估我们的方法。我们证明,该解决方案能够在大约85%的测试用例中正确识别包装结构,而在关注最常见的包装类型时,甚至可以识别更多(91%)包装结构。

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