Convolutional Neural Network Based Object Detection for Additive Manufacturing

2019 19th International Conference on Advanced Robotics (ICAR)(2019)

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摘要
Efficient object detection is important for automatic manufacturing systems applications. This work proposes the use of deep learning neural networks for vision-based additive manufactured object recognition. Three deep learning based object detection architectures (SSD300, SSD512 and Faster R-CNN) are applied for detection of parts manufactured on a 3D printer. The object detection information is used to feed a vision-based robotic grasping task, as part of a robotic assisted additive manufacturing system. Transfer learning is applied and a high detection efficiency is achieved for the considered dataset.
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关键词
automatic manufacturing systems applications,deep learning neural networks,deep learning based object detection architectures,SSD300,SSD512,vision-based additive manufactured object recognition,convolutional neural network,transfer learning,robotic assisted additive manufacturing system,vision-based robotic grasping task,object detection information
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