Improving pose estimation accuracy for large hole shaft structure assembly based on super-resolution.

Kuai Zhou, Xiang Huang, Shuanggao Li, Gen Li
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Abstract

Image resolution is crucial to visual measurement accuracy, but on the one hand, the cost of increasing the resolution of the acquisition device is prohibitive, and on the other hand, the resolution of the image inevitably decreases when photographing objects at a distance, which is particularly common in the assembly of large hole shaft structures for pose measurement. In this study, a deep learning-based method for super-resolution of large hole shaft images is proposed, including a super-resolution dataset for hole shaft images and a new deep learning super-resolution network structure, which is designed to enhance the perception of edge information in images through the core structure and improve efficiency while improving the effect of image super-resolution. A series of experiments have proven that the method is highly accurate and efficient and can be applied to the automatic assembly of large hole shaft structures.
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基于超分辨率提高大孔轴结构装配位姿估计精度。
图像分辨率对视觉测量精度至关重要,但一方面,提高采集设备分辨率的成本令人望而却步,另一方面,在远距离拍摄物体时,图像分辨率不可避免地降低,这在大孔轴结构装配进行位姿测量时尤为常见。本研究提出了一种基于深度学习的大孔井图像超分辨方法,包括一个孔井图像超分辨数据集和一种新的深度学习超分辨网络结构,旨在通过核心结构增强图像中边缘信息的感知,在提高图像超分辨效果的同时提高效率。一系列实验证明,该方法精度高、效率高,可应用于大孔井筒结构的自动装配。
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