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Chun, Se Young
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dc.citation.conferencePlace US -
dc.citation.title IEEE Conference on Computer Vision and Pattern Recognition -
dc.contributor.author Magauiya Zhussip -
dc.contributor.author Shakarim Soltanayev -
dc.contributor.author Chun, Se Young -
dc.date.accessioned 2024-02-01T00:08:34Z -
dc.date.available 2024-02-01T00:08:34Z -
dc.date.created 2019-07-09 -
dc.date.issued 2019-06-18 -
dc.description.abstract Compressive sensing is a method to recover the original image from undersampled measurements. In order to overcome the ill-posedness of this inverse problem, image priors are used such as sparsity, minimal total-variation, or self-similarity of images. Recently, deep learning based compressive image recovery methods have been proposed and have yielded state-of-the-art performances. They used data-driven approaches instead of hand-crafted image priors to regularize ill-posed inverse problems with undersampled data. Ironically, training deep neural networks (DNNs) for them requires “clean” ground truth images, but obtaining the best quality images from undersampled data requires well-trained DNNs. To resolve this dilemma, we propose novel methods based on two well-grounded theories: denoiser-approximate message passing (D-AMP) and Stein’s unbiased risk estimator (SURE). Our proposed methods were able to train deep learning based image denoisers from undersampled measurements without ground truth images and without additional image priors, and to recover images with state-of-the-art qualities from undersampled data. We evaluated our methods for various compressive sensing recovery problems with Gaussian random, coded diffraction pattern, and compressive sensing MRI measurement matrices. Our proposed methods yielded state-of-the-art performances for all cases without ground truth images. Our methods also yielded comparable performances to the methods with ground truth data. -
dc.identifier.bibliographicCitation IEEE Conference on Computer Vision and Pattern Recognition -
dc.identifier.doi 10.1109/CVPR.2019.01050 -
dc.identifier.scopusid 2-s2.0-85078791887 -
dc.identifier.uri https://scholarworks.unist.ac.kr/handle/201301/79656 -
dc.identifier.url http://openaccess.thecvf.com/content_CVPR_2019/papers/Zhussip_Training_Deep_Learning_Based_Image_Denoisers_From_Undersampled_Measurements_Without_CVPR_2019_paper.pdf -
dc.language 영어 -
dc.publisher IEEE/CVF -
dc.title Training Deep Learning Based Image Denoisers From Undersampled Measurements Without Ground Truth and Without Image Prior -
dc.type Conference Paper -
dc.date.conferenceDate 2019-06-16 -

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