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The primary objective is to evaluate the effects of governmental restrictions on a variety of activities including school attendance, work, shopping, and leisure. We compare both data sets by using a set of defined criteria, including anticipated activity reductions during full and partial closures, as well as the timing of activity changes in response to policy implementations. Our research reveals that while cell-based data lacks the precision to differentiate between various out-of-home activities effectively, GPS-based data, especially when integrated with OpenStreetMap, proves significantly more adept at identifying and categorizing specific activity types. 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Accessed 27-08-2024"},{"key":"510_CR53","unstructured":"Der Minister f\u00fcr Arbeit, Gesundheit und Soziales des Landes Nordrhein-Westfalen (2021) Verordnung zum Schutz vor Neuinfizierungen mit dem Coronavirus SARS-CoV-2 im Bereich der Betreuungsinfrastruktur (Coronabetreuungsverordnung\u00a0\u2013 CoronaBetrVO). https:\/\/www.land.nrw\/sites\/default\/files\/asset\/document\/2021-02-19_coronabetrvo_ab_22.02.2021_lesefassung.pdf. Accessed 27-08-2024"},{"key":"510_CR54","unstructured":"Landesregierung Nordrhein-Westfalen (2020) Nordrhein-Westfalen-Plan tritt in Kraft \/ Stufenweise \u00d6ffnung der Anti-Corona-Ma\u00dfnahmen startet in der kommenden Woche. https:\/\/www.land.nrw\/pressemitteilung\/nordrhein-westfalen-plan-tritt-kraft-stufenweise-oeffnung-der-anti-corona. Accessed 19-08-2024"},{"key":"510_CR55","unstructured":"Landesregierung Nordrhein-Westfalen (2020) Landesregierung beschlie\u00dft weitreichendes Kontaktverbot und weitere Ma\u00dfnahmen zur Eind\u00e4mmung der Corona-Virus-Pandemie. https:\/\/www.land.nrw\/pressemitteilung\/landesregierung-beschliesst-weitreichendes-kontaktverbot-und-weitere-massnahmen-zur. Accessed 19-08-2024"},{"key":"510_CR56","unstructured":"Landesregierung Nordrhein-Westfalen (2020) Verordnung zum Schutz vor Neuinfizierungen mit dem Coronavirus SARS-CoV-2 (Coronaschutzverordnung. CoronaSchVO. https:\/\/www.land.nrw\/sites\/default\/files\/asset\/document\/2020-10-30_coronaschutzverordnung_vom_30._oktober_2020.pdf. Accessed 19-08-2024"},{"key":"510_CR57","unstructured":"Landesregierung Nordrhein-Westfalen (2020) Landesregierung beschlie\u00dft weitere Ma\u00dfnahmen zur Eind\u00e4mmung der Corona-Virus-Pandemie. https:\/\/www.land.nrw\/pressemitteilung\/landesregierung-beschliesst-weitere-massnahmen-zur-eindaemmung-der-corona-virus. 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