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Alberto Belli

Researcher at Marche Polytechnic University

Publications -  83
Citations -  1419

Alberto Belli is an academic researcher from Marche Polytechnic University. The author has contributed to research in topics: Computer science & Medicine. The author has an hindex of 16, co-authored 62 publications receiving 970 citations.

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A High Reliability Wearable Device for Elderly Fall Detection

TL;DR: A fall detection system consisting of an inertial unit that includes triaxial accelerometer, gyroscope, and magnetometer with efficient data fusion and fall detection algorithms with excellent accuracy, sensitivity and specificity, improving the results of other techniques proposed in the literature.
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Metakaolin and fly ash alkali-activated mortars compared with cementitious mortars at the same strength class

TL;DR: Alkali-activated and cementitious mortars were tested and compared in terms of workability, dynamic modulus of elasticity, porosimetry, and water vapor permeability as discussed by the authors.
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Amazon, Google and Microsoft Solutions for IoT: Architectures and a Performance Comparison

TL;DR: This paper compares the three main Cloud Platforms (Amazon Web Services, Google Cloud Platform and Microsoft Azure) regarding to the services made available for the IoT and map the Cloud-IoT Platforms services with this architecture analyzing the key points for each platform.
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Binders alternative to Portland cement and waste management for sustainable construction—part 1

TL;DR: This review presents “a state of the art” report on sustainability in construction materials, including sulfoaluminate cements, alkali-activated materials, and geopolymers, and proposes different solutions to make the concrete industry more environmentally friendly.
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A Wearable Fall Detector for Elderly People Based on AHRS and Barometric Sensor

TL;DR: A waist-mounted device useful to detect possible falls in elderly people is presented and an extremely efficient system for fall detection is developed, reaching 100% of sensitivity in commonly adopted testing protocols.