scholarly journals Applying Deep Learning to Automate UAV-Based Detection of Scatterable Landmines

2020 ◽  
Vol 12 (5) ◽  
pp. 859
Author(s):  
Jasper Baur ◽  
Gabriel Steinberg ◽  
Alex Nikulin ◽  
Kenneth Chiu ◽  
Timothy S. de Smet

Recent advances in unmanned-aerial-vehicle- (UAV-) based remote sensing utilizing lightweight multispectral and thermal infrared sensors allow for rapid wide-area landmine contamination detection and mapping surveys. We present results of a study focused on developing and testing an automated technique of remote landmine detection and identification of scatterable antipersonnel landmines in wide-area surveys. Our methodology is calibrated for the detection of scatterable plastic landmines which utilize a liquid explosive encapsulated in a polyethylene or plastic body in their design. We base our findings on analysis of multispectral and thermal datasets collected by an automated UAV-survey system featuring scattered PFM-1-type landmines as test objects and present results of an effort to automate landmine detection, relying on supervised learning algorithms using a Faster Regional-Convolutional Neural Network (Faster R-CNN). The RGB visible light Faster R-CNN demo yielded a 99.3% testing accuracy for a partially withheld testing set and 71.5% testing accuracy for a completely withheld testing set. Across multiple test environments, using centimeter scale accurate georeferenced datasets paired with Faster R-CNN, allowed for accurate automated detection of test PFM-1 landmines. This method can be calibrated to other types of scatterable antipersonnel mines in future trials to aid humanitarian demining initiatives. With millions of remnant PFM-1 and similar scatterable plastic mines across post-conflict regions and considerable stockpiles of these landmines posing long-term humanitarian and economic threats to impacted communities, our methodology could considerably aid in efforts to demine impacted regions.

Chemosphere ◽  
2021 ◽  
Vol 273 ◽  
pp. 129646
Author(s):  
Ross N. Gillanders ◽  
James ME. Glackin ◽  
Zdenka Babić ◽  
Mario Muštra ◽  
Mitar Simić ◽  
...  

2021 ◽  
Author(s):  
Alex Nikulin ◽  
Timothy De Smet ◽  
Andrii Puliaiev ◽  
Pavlo Kosolapkin ◽  
Vitalii Gitchenko ◽  
...  

2012 ◽  
Vol 2012 ◽  
pp. 1-7 ◽  
Author(s):  
Kwang Hee Ko ◽  
Gyubin Jang ◽  
Kyungmi Park ◽  
Kangwook Kim

This paper presents a method to identify landmines in various burial conditions. A ground penetration radar is used to generate data set, which is then processed to reduce the ground effect and noise to obtain landmine signals. Principal components and Fourier coefficients of the landmine signals are computed, which are used as features of each landmine for detection and identification. A database is constructed based on the features of various types of landmines and the ground conditions, including the different levels of moisture and types of ground and the burial depths of the landmines. Detection and identification is performed by searching for features in the database. For a robust decision, the counting method and the Mahalanobis distance-based likelihood ratio test method are employed. Four landmines, different in size and material, are considered as examples that demonstrate the efficiency of the proposed method for detecting and identifying landmines.


2010 ◽  
Author(s):  
Joseph A. Bucaro ◽  
Brian H. Houston ◽  
Harry Simpson ◽  
Michael Saniga ◽  
Angie Sarkissian ◽  
...  

2018 ◽  
Vol 10 (11) ◽  
pp. 1672 ◽  
Author(s):  
Alex Nikulin ◽  
Timothy de Smet ◽  
Jasper Baur ◽  
William Frazer ◽  
Jacob Abramowitz

Use of landmines as a weapon of unconventional warfare rapidly increased in armed conflicts of the last century and some estimates suggest that least 100 million remain in place across post-conflict nations. Among munitions and explosives of concern (MECs), aerially deployed plastic anti-personnel mines are particularly challenging in terms of their detection and subsequent disposal. Detection and identification of MECs largely relies on the geophysical principles of magnetometry and electromagnetic-induction (EMI), which makes non-magnetic plastic MECs particularly difficult to detect and extremely dangerous to clear. In a recent study we demonstrated the potential of time-lapse thermal-imaging technology to detect unique thermal signatures associated with plastic MECs. Here, we present the results of a series of field trials demonstrating the viability of low-cost unmanned aerial vehicles (UAVs) equipped with infrared cameras to detect and identify the most notorious plastic landmines—the Soviet-era PFM-1 aerially deployed antipersonnel mine. We present results of an experiment simulating analysis of a full-scale ballistic PFM-1 minefield and demonstrate our ability to accurately detect and identify all elements associated with this type of deployment. We report significantly reduced time and equipment costs associated with the use of a UAV-mounted infrared system and anticipate its utility to both the scientific and non-governmental organization (NGO) community.


2011 ◽  
Author(s):  
J. A. Bucaro ◽  
B. H. Houston ◽  
H. Simpson ◽  
Z. Waters ◽  
M. Saniga ◽  
...  

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