depth classification
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Measurement ◽  
2021 ◽  
pp. 110660
Author(s):  
Haoze Chen ◽  
Zhijie Zhang ◽  
Wuliang Yin ◽  
Chenyang Zhao ◽  
Fengxiang Wang ◽  
...  

Author(s):  
Sangrock Lee ◽  
Rahul ◽  
James Lukan ◽  
Tatiana Boyko ◽  
Kateryna Zelenova ◽  
...  

2021 ◽  
Vol 48 (2) ◽  
Author(s):  
Olusola S. Makinde ◽  

Several multivariate depth functions have been proposed in the literature, of which some satisfy all the conditions for statistical depth functions while some do not. Spatial depth is known to be invariant to spherical and shift transformations. In this paper, the possibility of using different versions of spatial depth in classification is considered. The covariance-adjusted, weighted, and kernel-based versions of spatial depth functions are presented to classify multivariate outcomes. We extend the maximal depth classification notions for the covariance-adjusted, weighted, and kernel-based spatial depth versions. The classifiers' performance is considered and compared with some existing classification methods using simulated and real datasets.


Sensors ◽  
2021 ◽  
Vol 21 (2) ◽  
pp. 568
Author(s):  
Viviane Cunha Farias da Costa ◽  
Luiz Oliveira ◽  
Jano de Souza

The paradigm of the Internet of everything (IoE) is advancing toward enriching people’s lives by adding value to the Internet of things (IoT), with connections among people, processes, data, and things. This paper provides a survey of the literature on IoE research, highlighting concerns in terms of intelligence services and knowledge creation. The significant contributions of this study are as follows: (1) a systematic literature review of IoE taxonomies (including IoT); (2) development of a taxonomy to guide the identification of critical knowledge in IoE applications, an in-depth classification of IoE enablers (sensors and actuators); (3) validation of the defined taxonomy with 50 IoE applications; and (4) identification of issues and challenges in existing IoE applications (using the defined taxonomy) with regard to insights about knowledge processes. To the best of our knowledge, and taking into consideration the 76 other taxonomies compared, this present work represents the most comprehensive taxonomy that provides the orchestration of intelligence in network connections concerning knowledge processes, type of IoE enablers, observation characteristics, and technological capabilities in IoE applications.


2020 ◽  
Vol 34 (07) ◽  
pp. 12508-12515
Author(s):  
Qingshan Xu ◽  
Wenbing Tao

Deep learning has shown to be effective for depth inference in multi-view stereo (MVS). However, the scalability and accuracy still remain an open problem in this domain. This can be attributed to the memory-consuming cost volume representation and inappropriate depth inference. Inspired by the group-wise correlation in stereo matching, we propose an average group-wise correlation similarity measure to construct a lightweight cost volume. This can not only reduce the memory consumption but also reduce the computational burden in the cost volume filtering. Based on our effective cost volume representation, we propose a cascade 3D U-Net module to regularize the cost volume to further boost the performance. Unlike the previous methods that treat multi-view depth inference as a depth regression problem or an inverse depth classification problem, we recast multi-view depth inference as an inverse depth regression task. This allows our network to achieve sub-pixel estimation and be applicable to large-scale scenes. Through extensive experiments on DTU dataset and Tanks and Temples dataset, we show that our proposed network with Correlation cost volume and Inverse DEpth Regression (CIDER1), achieves state-of-the-art results, demonstrating its superior performance on scalability and accuracy.


Author(s):  
Olena Rybalko ◽  
Irina Varlamova ◽  
G.O. Zhelnina ◽  
Keyword(s):  

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