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dc.contributor.authorRodríguez Corral, José María 
dc.contributor.authorCivit-Masot, Javier
dc.contributor.authorLuna Perejón, Francisco
dc.contributor.authorDíaz Cano, Ignacio 
dc.contributor.authorMorgado Estévez, Arturo 
dc.contributor.authorDomínguez-Morales, Manuel
dc.contributor.otherIngeniería en Automática, Electrónica, Arquitectura y Redes de Computadoreses_ES
dc.contributor.otherIngeniería Informáticaes_ES
dc.dateinfo:eu-repo/date/embargoEnd/2025-11-01
dc.date.accessioned2023-12-12T16:22:45Z
dc.date.available2023-12-12T16:22:45Z
dc.date.issued2024-01
dc.identifier.issn0952-1976
dc.identifier.urihttp://hdl.handle.net/10498/29776
dc.descriptionManuscrito aceptado por la revista "Engineering Applications of Artificial Intelligence" (Elsevier) el 11 de octubre de 2023. Se envió la versión inicial el 25 de noviembre de 2022, y la revisada el 26 de julio de 2023. Desde el 28 de octubre de 2023 aparece el artículo publicado en el portal ScienceDirect (https://doi.org/10.1016/j.engappai.2023.107298).es_ES
dc.description.abstractIn this work, we evaluate the energy usage of fully embedded medical diagnosis aids based on both segmentation and classification of medical images implemented on Edge TPU and embedded GPU processors. We use glaucoma diagnosis based on color fundus images as an example to show the possibility of performing segmentation and classification in real time on embedded boards and to highlight the different energy requirements of the studied implementations. Several other works develop the use of segmentation and feature extraction techniques to detect glaucoma, among many other pathologies, with deep neural networks. Memory limitations and low processing capabilities of embedded accelerated systems (EAS) limit their use for deep network-based system training. However, including specific acceleration hardware, such as NVIDIA’s Maxwell GPU or Google’s Edge TPU, enables them to perform inferences using complex pre-trained networks in very reasonable times. In this study, we evaluate the timing and energy performance of two EAS equipped with Machine Learning (ML) accelerators executing an example diagnostic tool developed in a previous work. For optic disc (OD) and cup (OC) segmentation, the obtained prediction times per image are under 29 and 43 ms using Edge TPUs and Maxwell GPUs respectively. Prediction times for the classification subsystem are lower than 10 and 14 ms for Edge TPUs and Maxwell GPUs respectively. Regarding energy usage, in approximate terms, for OD segmentation Edge TPUs and Maxwell GPUs use 38 and 190 mJ per image respectively. For fundus classification, Edge TPUs and Maxwell GPUs use 45 and 70 mJ respectively.es_ES
dc.formatapplication/pdfes_ES
dc.language.isoenges_ES
dc.rightsAttribution-NonCommercial-NoDerivatives 4.0 Internacional*
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/*
dc.sourceEngineering Applications of Artificial Intelligence Volume 127, Part B, January 2024, 107298.es_ES
dc.subjectEdge TPUes_ES
dc.subjectEmbedded accelerated systemses_ES
dc.subjectEnergy efficiencyes_ES
dc.subjectGPUes_ES
dc.subjectMedical diagnostic aidses_ES
dc.titleEnergy efficiency in edge TPU vs. embedded GPU for computer-aided medical imaging segmentation and classificationes_ES
dc.typepreprintes_ES
dc.rights.accessRightsopen accesses_ES
dc.description.physDescManuscrito de 37 páginas.es_ES
dc.identifier.doi10.1016/j.engappai.2023.107298
dc.type.hasVersionAMes_ES


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Attribution-NonCommercial-NoDerivatives 4.0 Internacional
This work is under a Creative Commons License Attribution-NonCommercial-NoDerivatives 4.0 Internacional