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Training CNNs from Synthetic Data for Part Handling in Industrial Environments

机译:从工业环境中的综合数据培训CNNS

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As Convolutional Neural Network based models become reliable and efficient, two questions arise in relation to their applications for industrial purposes. The usefulness of these models in industrial environments and their implementation in these settings. This paper describes the autonomous generation of Region based CNN models trained on images from rendered CAD models and examines their applicability and performance for part handling application. The development of the automated synthetic data generation is detailed and two CNN models are trained with the aim to detect a car component and differentiate it against another similar looking part. The performance of these models is tested on real images and it was found that the proposed approach can be easily adopted for detecting a range of parts in arbitrary backgrounds. Moreover, the use of syntheic images for training CNNs automates the process of generating a detector.
机译:由于卷积神经网络的基础模型变得可靠且有效,因此有关其工业目的的应用,因此出现了两个问题。这些模型在工业环境中的有用性及其在这些设置中的实现。本文介绍了在呈现CAD模型上培训的基于区域的基于CNN模型的自主生成,并检查了它们的适用性和性能的零件处理应用程序。详细介绍了自动合成数据生成的开发,并且训练了两个CNN模型,目的是检测汽车组件并将其区分离地抵抗另一个类似的看部件。这些模型的性能在真实图像上进行了测试,并且发现可以容易地采用所提出的方法来检测任意背景中的一系列部分。此外,用于训练CNNS的合成图像的使用使得产生检测器的过程。

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