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Synthetic datasets for Deep Learning in computer-vision assisted tasks in manufacturing

机译:计算机视觉辅助任务的深度学习合成数据集

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Artificial Intelligence applications based on Machine Learning methods are widely accepted as promising technologies in manufacturing. Deep Learning (DL) techniques, such as Convolutional Neural Networks (CNN), are successfully used in many computer-vision tasks in manufacturing. These state-of-the-art techniques are requiring large volumes of annotated datasets for training. However, such an approach is expensive, prone to errors and labor as well as time intensive, especially in highly complex and dynamic production environments. Synthetic datasets can be utilized for accelerating the training phase of DL by creating suitable training datasets. This work presents a framework for generating datasets through a chain of simulation tools. The framework is used for generating synthetic images of manufactured parts. States of the parts such as the rotation in different rotation axis need to be recognized by a computer-vision system that assists a manufacturing operation. A number of prior trained CNNs are retrained with the synthetically generated images. The CNNs are tested upon actual images of manufactured parts. The performance of different CNN models is presented, compared and discussed. The results indicate that CNNs trained on synthetically generated datasets may have acceptable performance when used in for assisting tasks in manufacturing.
机译:基于机器学习方法的人工智能应用被广泛被认为是制造业的有前途的技术。深度学习(DL)技术,例如卷积神经网络(CNN),在制造中的许多计算机视觉任务中成功地使用。这些最先进的技术需要大量的注释数据集进行培训。然而,这种方法昂贵,容易出错,劳动力以及时间密集,特别是在高度复杂和动态的生产环境中。通过创建合适的训练数据集,可以利用合成数据集加速DL的训练阶段。这项工作介绍了通过一系列仿真工具生成数据集的框架。该框架用于生成制造部件的合成图像。诸如不同旋转轴的旋转的零件的状态需要通过有助于制造操作的计算机视觉系统来识别。使用合成生成的图像再培训许多现有训练的CNN。 CNN在制造部件的实际图像上进行测试。提出,比较和讨论了不同CNN模型的性能。结果表明,当用于辅助制造中的任务时,在合成产生的数据集上训练的CNN可以具有可接受的性能。

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