Detecting, identifying, and localizing radiological material in urban environments using scan statistics

02/08/2020
by   Michael D. Porter, et al.
0

A method is proposed, based on scan statistics, to detect, identify, and localize illicit radiological material using mobile sensors in an urban environment. Our method handles varying levels of background radiation that change according to an (unknown) environment. Our method can accurately determine if a source is present along a street segment as well as identify which of six possible sources generated the radiation. Our method can also localize the source, when detected, to within a few seconds. We have presented our results across a range of decision thresholds allowing stakeholders to evaluate the performance at different false alarm rates. Due to the simplicity of our approach, our models can be trained in a few minutes with very little training data and holds the potential to score a run in real-time. Our method was one of the top performing submissions in the 'Detecting Radiological Threats in Urban Areas' competition.

READ FULL TEXT

page 4

page 5

research
03/02/2016

LiDAR Ground Filtering Algorithm for Urban Areas Using Scan Line Based Segmentation

This paper addresses the task of separating ground points from airborne ...
research
11/15/2022

Air Pollution Hotspot Detection and Source Feature Analysis using Cross-domain Urban Data

Air pollution is a major global environmental health threat, in particul...
research
08/20/2019

Identifying Indoor Points of Interest via Mobile Crowdsensing: An Experimental Study

This paper presents a mobile crowdsensing approach to identify the indoo...
research
11/21/2020

Semantic-Based VPS for Smartphone Localization in Challenging Urban Environments

Accurate smartphone-based outdoor localization system in deep urban cany...
research
12/08/2022

An Open-Source Gazebo Plugin for GNSS Multipath Signal Emulation in Virtual Urban Canyons

One of the major errors affecting GNSS signals in urban canyons is GNSS ...
research
11/01/2017

Recognizing Textures with Mobile Cameras for Pedestrian Safety Applications

As smartphone rooted distractions become commonplace, the lack of compel...

Please sign up or login with your details

Forgot password? Click here to reset