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AQuaMoHo: Localized Low-Cost Outdoor Air Quality Sensing over a Thermo-Hygrometer. (arXiv:2204.11484v3 [cs.CY] UPDATED)
Nov. 21, 2022, 2:12 a.m. | Prithviraj Pramanik, Prasenjit Karmakar, Praveen Kumar Sharma, Soumyajit Chatterjee, Abhijit Roy, Santanu Mandal, Subrata Nandi, Sandip Chakraborty, M
cs.LG updates on arXiv.org arxiv.org
Efficient air quality sensing serves as one of the essential services
provided in any recent smart city. Mostly facilitated by sparsely deployed Air
Quality Monitoring Stations (AQMSs) that are difficult to install and maintain,
the overall spatial variation heavily impacts air quality monitoring for
locations far enough from these pre-deployed public infrastructures. To
mitigate this, we in this paper propose a framework named AQuaMoHo that can
annotate data obtained from a low-cost thermo-hygrometer (as the sole physical
sensing device) with …
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