Please use this identifier to cite or link to this item: http://repositorio.ufla.br/jspui/handle/1/49828
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dc.creatorSilva, Juan Casavílca-
dc.creatorSaadi, Muhammad-
dc.creatorWuttisittikulkij, Lunchakorn-
dc.creatorMilitani, Davi Ribeiro-
dc.creatorRosa, Renata Lopes-
dc.creatorRodríguez, Demóstenes Zegarra-
dc.creatorOtaibi, Sattam Al-
dc.date.accessioned2022-04-28T22:23:15Z-
dc.date.available2022-04-28T22:23:15Z-
dc.date.issued2021-05-
dc.identifier.citationSILVA, J. C. et al. Light-field imaging reconstruction using deep learning enabling intelligent autonomous transportation system. IEEE Transactions on Intelligent Transportation Systems, [S.I.], v. 23, n. 2, p. 1587-1595, Feb. 2022. DOI: 10.1109/TITS.2021.3079644.pt_BR
dc.identifier.urihttps://ieeexplore.ieee.org/document/9442895pt_BR
dc.identifier.urihttp://repositorio.ufla.br/jspui/handle/1/49828-
dc.description.abstractLight-field (LF) cameras, also known as plenoptic cameras, permit the recording of the 4D LF distribution of target scenes. However, many times, surface errors of a microlens array (MLA) are responsible for degradation in the images captured by a plenoptic camera. Additionally, the limited pixel count of the sensor can cause missing parallax information. The aforementioned issues are crucial for creating accurate maps for Intelligent Autonomous Transport System (IATS), because they cause loss of LF information, and need to be addressed. To tackle this problem, a learning-based framework by directly simulating the LF distribution is proposed. A high-dimensional convolution layer with densely sampled LFs in 4D space and considering a soft activation function based on ReLU segmentation correction is used to generate a superresolution (SR) LF image, improving the convergence rate in the deep learning network. Experimental results show that our proposed LF image reconstruction framework outperforms the existing state-of-the-art approaches; specifically, it is effective for learning the LF distribution and generating high-quality LF images. Different image quality assessment methods are used to evaluate the performance of the proposed framework, such as PSNR, SSIM, IWSSIM, FSIM, GFM, MDFM, and HDR-VDP. Additionally, the computational efficiency was evaluated in terms of number of parameters and FLOPs, and experimental results demonstrated that our proposed framework reached the highest performance in most of the datasets used.pt_BR
dc.languageenpt_BR
dc.publisherInstitute of Electrical and Electronics Engineers (IEEE)pt_BR
dc.rightsrestrictAccesspt_BR
dc.sourceIEEE Transactions on Intelligent Transportation Systemspt_BR
dc.subjectLight-field imagingpt_BR
dc.subjectDeep learning frameworkpt_BR
dc.subjectLow computational complexitypt_BR
dc.subjectAutonomous transportation systemspt_BR
dc.subjectIntelligent transportation systemspt_BR
dc.subjectAprendizado profundopt_BR
dc.subjectBaixa complexidade computacionalpt_BR
dc.subjectSistemas autônomos de transportept_BR
dc.subjectSistemas de transportes inteligentespt_BR
dc.titleLight-field imaging reconstruction using deep learning enabling intelligent autonomous transportation systempt_BR
dc.typeArtigopt_BR
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