Computer Vision on X-ray Data in Industrial Production and Security
Applications: A survey
- URL: http://arxiv.org/abs/2211.05565v1
- Date: Thu, 10 Nov 2022 13:37:36 GMT
- Title: Computer Vision on X-ray Data in Industrial Production and Security
Applications: A survey
- Authors: Mehdi Rafiei, Jenni Raitoharju, Alexandros Iosifidis
- Abstract summary: This survey reviews the recent research on using computer vision and machine learning for X-ray analysis in industrial production and security applications.
It covers the applications, techniques, evaluation metrics, datasets, and performance comparison of those techniques on publicly available datasets.
- Score: 89.45221564651145
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: X-ray imaging technology has been used for decades in clinical tasks to
reveal the internal condition of different organs, and in recent years, it has
become more common in other areas such as industry, security, and geography.
The recent development of computer vision and machine learning techniques has
also made it easier to automatically process X-ray images and several machine
learning-based object (anomaly) detection, classification, and segmentation
methods have been recently employed in X-ray image analysis. Due to the high
potential of deep learning in related image processing applications, it has
been used in most of the studies. This survey reviews the recent research on
using computer vision and machine learning for X-ray analysis in industrial
production and security applications and covers the applications, techniques,
evaluation metrics, datasets, and performance comparison of those techniques on
publicly available datasets. We also highlight some drawbacks in the published
research and give recommendations for future research in computer vision-based
X-ray analysis.
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