In industrial processes, predictive maintenance or automated optical analysis of artifacts is fundamental to ensure high-quality products with low costs. However, this step is still done by sophisticated systems or human operators. Automating this process with low-cost solutions while keeping high product quality is one of the most challenging goals of the Industrial Internet of Things (IIoT). IIoT fosters an automation-based production model that uses machine data to enable faster, more flexible, and more efficient production lines [1], leading companies to produce higher-quality goods at lower costs.

Industrial Visual Inspection with TinyML for High-Performance Quality Control / Albanese, Andrea; Brunelli, Davide. - In: IEEE INSTRUMENTATION & MEASUREMENT MAGAZINE. - ISSN 1094-6969. - 26:8(2023), pp. 17-22. [10.1109/MIM.2023.10292593]

Industrial Visual Inspection with TinyML for High-Performance Quality Control

Albanese, Andrea
Primo
;
Brunelli, Davide
Ultimo
2023-01-01

Abstract

In industrial processes, predictive maintenance or automated optical analysis of artifacts is fundamental to ensure high-quality products with low costs. However, this step is still done by sophisticated systems or human operators. Automating this process with low-cost solutions while keeping high product quality is one of the most challenging goals of the Industrial Internet of Things (IIoT). IIoT fosters an automation-based production model that uses machine data to enable faster, more flexible, and more efficient production lines [1], leading companies to produce higher-quality goods at lower costs.
2023
8
Albanese, Andrea; Brunelli, Davide
Industrial Visual Inspection with TinyML for High-Performance Quality Control / Albanese, Andrea; Brunelli, Davide. - In: IEEE INSTRUMENTATION & MEASUREMENT MAGAZINE. - ISSN 1094-6969. - 26:8(2023), pp. 17-22. [10.1109/MIM.2023.10292593]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/398229
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