2019
DOI: 10.20944/preprints201905.0274.v1
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Emergent Challenges for Science Suas Data Management: Fairness through Community Engagement and Best Practices Development

Abstract: The use of small Unmanned Aircraft Systems (sUAS ) as platforms for data capture has rapidly increased in recent years. However, while there has been significant investment in improving the aircraft, sensors, operations, and legislation infrastructure for such, little attention has been paid to supporting the management of the complex data capture pipeline sUAS involve. This paper reports on the outcomes of a four-year-long community-engagement-based investigation into what tools, practices, and challenges cur… Show more

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Cited by 11 publications
(5 citation statements)
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“…All images were captured in 2018 during a 3-month period between early April and early July, and thus our work represents a postmortem investigation into the drivers of cumulative tree mortality. Following the call by Wyngaard et al 82 , we establish “data product levels” to reflect the image processing pipeline from raw imagery (Level 0) to calibrated, fine-scale forest structure and composition information on regular grids (Level 4), with each new data level derived from levels below it. Here, we outline the steps in the processing and calibration pipeline visualized in Fig.…”
Section: Methodsmentioning
confidence: 99%
“…All images were captured in 2018 during a 3-month period between early April and early July, and thus our work represents a postmortem investigation into the drivers of cumulative tree mortality. Following the call by Wyngaard et al 82 , we establish “data product levels” to reflect the image processing pipeline from raw imagery (Level 0) to calibrated, fine-scale forest structure and composition information on regular grids (Level 4), with each new data level derived from levels below it. Here, we outline the steps in the processing and calibration pipeline visualized in Fig.…”
Section: Methodsmentioning
confidence: 99%
“…While collecting UAS-based data is important, extracting actionable scientific insight calls for good data curation, storage, sharing, and reuse [ 150 ]. This is especially true if substantial resources are expended in collecting large quantities of UAS-based imaging data, which can be used by multiple groups to answer complementary research questions.…”
Section: Preprocessing and Data Preparationmentioning
confidence: 99%
“…flight altitude, scientific sensor calibration date and processes, scientific parameters, FAA airspace regulations), and complex processes (e.g. data stitching, data management, data pre-and postprocessing), many of which can influence the utilization and interpretation of the data [7]. In order to fly drones under the FAA's Small UAS Rule (Part 107) for research purposes, remote pilots must obtain a certificate from the FAA.…”
Section: Introductionmentioning
confidence: 99%