omkar-commits / Detereminig-Trustworhiness-of-IoT-crowdsensing-Data
Master's Project: The trustworthiness of data is one of the important aspects taken into consideration in Mobile crowd sensing context where number of users submit the data which can be false or malicious and eventually affect future predictions. In this project trustworthiness of data is determined on the crowdsensing data related to traffic an…
☆9Updated 3 years ago
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