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Efficient 3D object tracking approach based on convolutional neural network and Monte Carlo algorithms used for a pick and place robot

机译:基于卷积神经网络的高效3D对象跟踪方法,校正机器人使用蒙特卡罗算法

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Currently, Deep Learning (DL) shows us powerful capabilities for image processing. But it cannot output the exact photometric process parameters and shows non-interpretable results. Considering such limitations, this paper presents a robot vision system based on Convolutional Neural Networks (CNN) and Monte Carlo algorithms. As an example to discuss about how to apply DL in industry. In the approach, CNN is used for preprocessing and offline tasks. Then the 6-DoF object position are estimated using a particle filter approach. Experiments will show that our approach is efficient and accurate. In future it could show potential solutions for human-machine collaboration systems.
机译:目前,深度学习(DL)向我们展示了对图像处理的强大功能。但它无法输出精确的光度过程参数并显示不可解释的结果。考虑到这一限制,本文介绍了基于卷积神经网络(CNN)和蒙特卡罗算法的机器人视觉系统。作为讨论如何在行业中申请DL的示例。在此方法中,CNN用于预处理和离线任务。然后使用粒子滤波器方法估计6-DOF对象位置。实验将显示我们的方法是有效准确的。将来,它可以显示人机协作系统的潜在解决方案。

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