A deep learning toolset to mask analysis with SEM digital twins

2021 ◽  
Author(s):  
Ajay K. Baranwal ◽  
Suhas Pillai ◽  
Thang Nguyen ◽  
Jun Yashima ◽  
Jim Dewitt ◽  
...  
Keyword(s):  
2021 ◽  
Author(s):  
Abhishek Mukhopadhyay ◽  
G S Rajshekar Reddy ◽  
Subhankar Ghosh ◽  
Murthy L R D ◽  
Pradipta Biswas

Author(s):  
F. Matrone ◽  
A. Lingua ◽  
R. Pierdicca ◽  
E. S. Malinverni ◽  
M. Paolanti ◽  
...  

Abstract. The lack of benchmarking data for the semantic segmentation of digital heritage scenarios is hampering the development of automatic classification solutions in this field. Heritage 3D data feature complex structures and uncommon classes that prevent the simple deployment of available methods developed in other fields and for other types of data. The semantic classification of heritage 3D data would support the community in better understanding and analysing digital twins, facilitate restoration and conservation work, etc. In this paper, we present the first benchmark with millions of manually labelled 3D points belonging to heritage scenarios, realised to facilitate the development, training, testing and evaluation of machine and deep learning methods and algorithms in the heritage field. The proposed benchmark, available at http://archdataset.polito.it/, comprises datasets and classification results for better comparisons and insights into the strengths and weaknesses of different machine and deep learning approaches for heritage point cloud semantic segmentation, in addition to promoting a form of crowdsourcing to enrich the already annotated database.


Algorithms ◽  
2021 ◽  
Vol 14 (5) ◽  
pp. 156
Author(s):  
Kamel Arafet ◽  
Rafael Berlanga

The generation of electricity through renewable energy sources increases every day, with solar energy being one of the fastest-growing. The emergence of information technologies such as Digital Twins (DT) in the field of the Internet of Things and Industry 4.0 allows a substantial development in automatic diagnostic systems. The objective of this work is to obtain the DT of a Photovoltaic Solar Farm (PVSF) with a deep-learning (DL) approach. To build such a DT, sensor-based time series are properly analyzed and processed. The resulting data are used to train a DL model (e.g., autoencoders) in order to detect anomalies of the physical system in its DT. Results show a reconstruction error around 0.1, a recall score of 0.92 and an Area Under Curve (AUC) of 0.97. Therefore, this paper demonstrates that the DT can reproduce the behavior as well as detect efficiently anomalies of the physical system.


2020 ◽  
Author(s):  
Ajay K. Baranwal ◽  
Suhas Pillai ◽  
Thang Nguyen ◽  
Jun Yashima ◽  
Jim Dewitt ◽  
...  
Keyword(s):  

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