Due to the still enormous burden of unexploded ordnance (UXO) in the subsurface worldwide, the safe recovery of a wide variety of buried weapons and ammunition requires efficient and reliable detection methods. Using a deep learning approach applied to magnetic field data distributed areal along the surface, we aim to achieve a more accurate localization of UXO and small magnetically effective objects in general by detecting the specific signature of their magnetic anomaly. To investigate the applicability of this approach, we developed a deep convolutional neural network that performs image segmentation in different potential measurement scenarios. In this process, the sought small-scale target signals should be distinguished from differe...
Recently, indoor localization has become an active area of research. Although there are various appr...
Predicting measurement outcomes from an underlying structure often follows directly from fundamental...
This paper is a summary of our work in developing a system for interpreting electromagnetic (EM) and...
https://hal-emse.ccsd.cnrs.fr/emse-03278442/file/actes_CNIA_CH_PFIA2021.pdfNational audienceThis con...
In recent years, deep learning methods have shown great promise in the field of geophysics, especial...
Offshore infrastructure projects in the UK must map and, ideally, distinguish all WWI and WWII munit...
A backpropagation neural network was trained to estimate the spatial location (offset and depth) of ...
A severe incident with the cargo ship MSC Zoe, which lost hundreds of containers near the Dutch coas...
Deep learning technology is generally applied to analyze periodic data, such as the data of electrom...
The choice of an effective interpretative methodology in terms of management costs, timing, reliabi...
This work has the ambition generate an algorithm able to clearly identify buried antipersonnel mine...
In industry, there is a need for remote sensing and autonomous method for the identification of the ...
In this paper, a Machine Learning (ML), and more specifically, a Deep Learning (DL) approach, is app...
Detection and localisation of hidden magnetic objects is studied. The concomitant disturbance of the...
In the past, many conventional algorithms, such as self-adaptive dynamic differential evolution and ...
Recently, indoor localization has become an active area of research. Although there are various appr...
Predicting measurement outcomes from an underlying structure often follows directly from fundamental...
This paper is a summary of our work in developing a system for interpreting electromagnetic (EM) and...
https://hal-emse.ccsd.cnrs.fr/emse-03278442/file/actes_CNIA_CH_PFIA2021.pdfNational audienceThis con...
In recent years, deep learning methods have shown great promise in the field of geophysics, especial...
Offshore infrastructure projects in the UK must map and, ideally, distinguish all WWI and WWII munit...
A backpropagation neural network was trained to estimate the spatial location (offset and depth) of ...
A severe incident with the cargo ship MSC Zoe, which lost hundreds of containers near the Dutch coas...
Deep learning technology is generally applied to analyze periodic data, such as the data of electrom...
The choice of an effective interpretative methodology in terms of management costs, timing, reliabi...
This work has the ambition generate an algorithm able to clearly identify buried antipersonnel mine...
In industry, there is a need for remote sensing and autonomous method for the identification of the ...
In this paper, a Machine Learning (ML), and more specifically, a Deep Learning (DL) approach, is app...
Detection and localisation of hidden magnetic objects is studied. The concomitant disturbance of the...
In the past, many conventional algorithms, such as self-adaptive dynamic differential evolution and ...
Recently, indoor localization has become an active area of research. Although there are various appr...
Predicting measurement outcomes from an underlying structure often follows directly from fundamental...
This paper is a summary of our work in developing a system for interpreting electromagnetic (EM) and...