Matches in SemOpenAlex for { <https://semopenalex.org/work/W3124620489> ?p ?o ?g. }
- W3124620489 endingPage "15180" @default.
- W3124620489 startingPage "15170" @default.
- W3124620489 abstract "Edge computing can provide many key functions without connecting to centralized servers, which enables remote areas to obtain real-time medical diagnoses. The combination of edge computing and Internet of things (IoT) devices can send remote patient data to the hospital, which will help to more effectively address long-term or chronic diseases. CT images are widely used in the diagnosis of clinical diseases, and their characteristics are an important basis for pathological diagnosis. In the CT imaging process, speckle noise is caused by the interference of ultrasound on human tissues, and its component information is complex. To solve these problems, we propose a 3D reconstruction method for noisy CT images in the IoT using edge computing. First, we propose a multi-stage feature extraction generative adversarial network (MF-GAN) denoising algorithm. The generator of MF-GAN adopts the multi-stage feature extraction, which can ensure the reconstruction of the image texture and edges. Second, we apply the denoised images generated from the MF-GAN method to perform the 3D reconstruction. A marching cube (MC) algorithm based on regional growth and trilinear interpolation (RGT-MC) is proposed. With the idea of regional growth, all voxels containing iso-surfaces are selected and calculated, which accelerates the reconstruction efficiency. The intersection point of the voxel and iso-surface is calculated by the trilinear interpolation algorithm, which effectively improves the reconstruction accuracy. The experimental results show that MF-GAN has a better denoising effect than other algorithms. Compared to other representative 3D algorithms, the RGT-MC algorithm greatly improves the efficiency and precision." @default.
- W3124620489 created "2021-02-01" @default.
- W3124620489 creator A5012223229 @default.
- W3124620489 creator A5015952277 @default.
- W3124620489 creator A5050509874 @default.
- W3124620489 creator A5077619274 @default.
- W3124620489 creator A5083007404 @default.
- W3124620489 creator A5087117798 @default.
- W3124620489 date "2021-01-01" @default.
- W3124620489 modified "2023-10-16" @default.
- W3124620489 title "3D Remote Healthcare for Noisy CT Images in the Internet of Things Using Edge Computing" @default.
- W3124620489 cites W1906770428 @default.
- W3124620489 cites W1971722192 @default.
- W3124620489 cites W2092233818 @default.
- W3124620489 cites W2096840222 @default.
- W3124620489 cites W2279498470 @default.
- W3124620489 cites W2293471722 @default.
- W3124620489 cites W2338593347 @default.
- W3124620489 cites W2508457857 @default.
- W3124620489 cites W2522277475 @default.
- W3124620489 cites W2560630570 @default.
- W3124620489 cites W2583921051 @default.
- W3124620489 cites W2587991298 @default.
- W3124620489 cites W2610069609 @default.
- W3124620489 cites W2743780012 @default.
- W3124620489 cites W2762355244 @default.
- W3124620489 cites W2791961904 @default.
- W3124620489 cites W2793888044 @default.
- W3124620489 cites W2805916667 @default.
- W3124620489 cites W2807773073 @default.
- W3124620489 cites W2824405835 @default.
- W3124620489 cites W2887817291 @default.
- W3124620489 cites W2902108835 @default.
- W3124620489 cites W2938101602 @default.
- W3124620489 cites W2960476140 @default.
- W3124620489 cites W3017307129 @default.
- W3124620489 cites W3082781169 @default.
- W3124620489 cites W3083299299 @default.
- W3124620489 cites W3088196840 @default.
- W3124620489 cites W3097409240 @default.
- W3124620489 cites W3103528285 @default.
- W3124620489 cites W3106295246 @default.
- W3124620489 cites W3117379804 @default.
- W3124620489 cites W3119569744 @default.
- W3124620489 doi "https://doi.org/10.1109/access.2021.3052469" @default.
- W3124620489 hasPublicationYear "2021" @default.
- W3124620489 type Work @default.
- W3124620489 sameAs 3124620489 @default.
- W3124620489 citedByCount "7" @default.
- W3124620489 countsByYear W31246204892021 @default.
- W3124620489 countsByYear W31246204892022 @default.
- W3124620489 countsByYear W31246204892023 @default.
- W3124620489 crossrefType "journal-article" @default.
- W3124620489 hasAuthorship W3124620489A5012223229 @default.
- W3124620489 hasAuthorship W3124620489A5015952277 @default.
- W3124620489 hasAuthorship W3124620489A5050509874 @default.
- W3124620489 hasAuthorship W3124620489A5077619274 @default.
- W3124620489 hasAuthorship W3124620489A5083007404 @default.
- W3124620489 hasAuthorship W3124620489A5087117798 @default.
- W3124620489 hasBestOaLocation W31246204891 @default.
- W3124620489 hasConcept C102290492 @default.
- W3124620489 hasConcept C11413529 @default.
- W3124620489 hasConcept C115961682 @default.
- W3124620489 hasConcept C137800194 @default.
- W3124620489 hasConcept C138885662 @default.
- W3124620489 hasConcept C141379421 @default.
- W3124620489 hasConcept C153180895 @default.
- W3124620489 hasConcept C154945302 @default.
- W3124620489 hasConcept C180940675 @default.
- W3124620489 hasConcept C2776401178 @default.
- W3124620489 hasConcept C31972630 @default.
- W3124620489 hasConcept C41008148 @default.
- W3124620489 hasConcept C41895202 @default.
- W3124620489 hasConcept C52622490 @default.
- W3124620489 hasConcept C54170458 @default.
- W3124620489 hasConcept C99498987 @default.
- W3124620489 hasConceptScore W3124620489C102290492 @default.
- W3124620489 hasConceptScore W3124620489C11413529 @default.
- W3124620489 hasConceptScore W3124620489C115961682 @default.
- W3124620489 hasConceptScore W3124620489C137800194 @default.
- W3124620489 hasConceptScore W3124620489C138885662 @default.
- W3124620489 hasConceptScore W3124620489C141379421 @default.
- W3124620489 hasConceptScore W3124620489C153180895 @default.
- W3124620489 hasConceptScore W3124620489C154945302 @default.
- W3124620489 hasConceptScore W3124620489C180940675 @default.
- W3124620489 hasConceptScore W3124620489C2776401178 @default.
- W3124620489 hasConceptScore W3124620489C31972630 @default.
- W3124620489 hasConceptScore W3124620489C41008148 @default.
- W3124620489 hasConceptScore W3124620489C41895202 @default.
- W3124620489 hasConceptScore W3124620489C52622490 @default.
- W3124620489 hasConceptScore W3124620489C54170458 @default.
- W3124620489 hasConceptScore W3124620489C99498987 @default.
- W3124620489 hasFunder F4320321001 @default.
- W3124620489 hasFunder F4320335443 @default.
- W3124620489 hasFunder F4320335970 @default.
- W3124620489 hasLocation W31246204891 @default.
- W3124620489 hasLocation W31246204892 @default.
- W3124620489 hasOpenAccess W3124620489 @default.