The Moon Zoo citizen science project: Preliminary results for the Apollo 17 landing site
Roberto Bugiolacchi, Steven Bamford, Paul Tar, Neil Thacker, Ian A., Crawford, Katherine H. Joy, Peter M. Grindrod, Chris Lintott

TL;DR
The Moon Zoo citizen science project leverages crowd-sourcing to analyze lunar craters from high-resolution images, validating its methods against expert surveys and providing insights into lunar surface features.
Contribution
This study evaluates and optimizes crowd-sourced crater data processing methods, demonstrating their validity and proposing improvements for lunar surface analysis.
Findings
Crowd-sourced crater measurements correlate well with expert data.
Optimal data filtering and clustering improve data reliability.
Derived lunar surface properties agree broadly with existing estimates.
Abstract
Moon Zoo is a citizen science project that utilises internet crowd-sourcing techniques. Moon Zoo users are asked to review high spatial resolution images from the Lunar Reconnaissance Orbiter Camera (LROC), onboard NASAs LRO spacecraft, and perform characterisation such as measuring impact crater sizes and identify morphological features of interest. The tasks are designed to address issues in lunar science and to aid future exploration of the Moon. We have tested various methodologies and parameters therein to interrogate and reduce the Moon Zoo crater location and size dataset against a validated expert survey. We chose the Apollo 17 region as a test area since it offers a broad range of cratered terrains, including secondary-rich areas, older maria, and uplands. The assessment involved parallel testing in three key areas: (1) filtering of data to remove problematic mark-ups; (2)…
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