Evaluating Lost Person Behavior Models |
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Authors: | Elena Sava Charles Twardy Robert Koester Mukul Sonwalkar |
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Affiliation: | 1. Geoinformatics and Earth Observation Laboratory, Department of Geography and Institute for CyberScience, Pennsylvania State University, Rockville, MD;2. C4I Center, George Mason University, Rockville, MD;3. Centre for Earth and Environmental Science Research, Kingston University, Rockville, MD;4. H3C LLC, Rockville, MD |
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Abstract: | ![]() US wilderness search and rescue consumes thousands of person‐hours and millions of dollars annually. Timeliness is critical: the probability of success decreases substantially after 24 hours. Although over 90% of searches are quickly resolved by standard “reflex” tasks, the remainder require and reward intensive planning. Planning begins with a probability map showing where the lost person is likely to be found. The MapScore project described here provides a way to evaluate probability maps using actual historical searches. In this work we generated probability maps the Euclidean distance tables in (Koester 2008 ), and using Doke's ( 2012 ) watershed model. Watershed boundaries follow high terrain and may better reflect actual barriers to travel. We also created a third model using the joint distribution using Euclidean and watershed features. On a metric where random maps score 0 and perfect maps score 1, the Euclidean distance model scored 0.78 (95%CI: 0.74–0.82, on 376 cases). The simple watershed model by itself was clearly inferior at 0.61, but the Combined model was slightly better at 0.81 (95%CI: 0.77–0.84). |
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