Pregled bibliografske jedinice broj: 1278707
Low tensor train and low multilinear rank approximations of 3D tensors for compression and de-speckling of optical coherence tomography Images
Low tensor train and low multilinear rank approximations of 3D tensors for compression and de-speckling of optical coherence tomography Images // Physics in medicine and biology, 68 (2023), 125002, 13 doi:10.1088/1361-6560/acd6d1 (međunarodna recenzija, članak, znanstveni)
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Naslov
Low tensor train and low multilinear rank approximations of 3D tensors for compression and de-speckling of optical coherence tomography Images
Autori
Kopriva, Ivica ; Shi, Fei ; Lai Mingyig ; Štanfel, Marija ; Chen, Haoyu ; Chen, Xinjian
Izvornik
Physics in medicine and biology (0031-9155) 68
(2023);
125002, 13
Vrsta, podvrsta i kategorija rada
Radovi u časopisima, članak, znanstveni
Ključne riječi
3D optical coherence tomography ; compression ; de-speckling ; tensor train rank ; multilinear rank ; Schatten p-norm ; surrogate of Schatten-0 norm
Sažetak
Objective. Many methods for compression and/or de-speckling of 3D optical coherence tomography (OCT) images operate on a slice-by-slice basis and, consequently, ignore spatial relations between the B-scans. Thus, we develop compression ratio (CR)-constrained low tensor train (TT) - and low multilinear (ML) rank approximations of 3D tensors for compression and de-speckling of 3D OCT images. Due to inherent denoising mechanism of low-rank approximation, compressed image is often even of better quality than the raw image it is based on. Approach. We formulate CR-constrained low rank approximations of 3D tensor as parallel non-convex non-smooth optimization problems implemented by alternating direction method of multipliers of unfolded tensors. In contrast to patch- and sparsity-based OCT image compression methods, proposed approach does not require clean images for dictionary learning, enables CR as high as 60:1, and it is fast. In contrast to deep networks based OCT image compression, proposed approach is training free and does not require any supervised data pre-processing. Main results. Proposed methodology is evaluated on twenty four images of a retina acquired on Topcon 3D OCT-1000 scanner, and twenty images of a retina acquired on Big Vision BV1000 3D OCT scanner. For the first dataset, statistical significance analysis shows that for CR<=35, all low ML rank approximations and Schatten-0 (S0) norm constrained low TT rank approximation can be useful for machine learning-based diagnostics by using segmented retina layers. Also for CR<=35, S0-constrained ML rank approximation and S0-constrained low TT rank approximation can be useful for visual inspection-based diagnostics. For the second dataset, statistical significance analysis shows that for CR<=60 all low ML rank approximations as well as S0 and S1/2 low TT ranks approximations can be useful for machine learning-based diagnostics by using segmented retina layers. Also, for CR<=60, low ML rank approximations constrained with Sp, p e {; ; 0, 1/2, 2/3}; ; and one surrogate of S0 can be useful for visual inspection-based diagnostics. That is also true for low TT rank approximations constrained with Sp, p e {; ; 0, 1/2, 2/3}; ; for CR<=20. Significance. Studies conducted on datasets acquired by two different types of scanners confirmed capabilities of proposed framework that, for a wide range of CRs, yields de-speckled 3D OCT images suitable for clinical data archiving and remote consultation, for visual inspection-based diagnosis and for machine learning-based diagnosis by using segmented retina layers.
Izvorni jezik
Engleski
Znanstvena područja
Matematika, Računarstvo, Kliničke medicinske znanosti
Napomena
8th Chinese-Croatian Inter-governmental S&T Cooperation Project
POVEZANOST RADA
Projekti:
HRZZ-IP-2016-06-5235 - Strukturne dekompozicije empirijskih podataka za računalno potpomognutu dijagnostiku bolesti (DEDAD) (Kopriva, Ivica, HRZZ - 2016-06) ( CroRIS)
KK.01.1.1.01.0009 - Napredne metode i tehnologije u znanosti o podatcima i kooperativnim sustavima (EK )
Ustanove:
Institut "Ruđer Bošković", Zagreb,
Klinički bolnički centar Rijeka
Profili:
Ivica Kopriva
(autor)
Citiraj ovu publikaciju:
Časopis indeksira:
- Current Contents Connect (CCC)
- Web of Science Core Collection (WoSCC)
- Science Citation Index Expanded (SCI-EXP)
- SCI-EXP, SSCI i/ili A&HCI
- Scopus
- MEDLINE