博碩士論文 108523057 完整後設資料紀錄

DC 欄位 語言
DC.contributor通訊工程學系zh_TW
DC.creator許位祥zh_TW
DC.creatorWei-Hsiang Hsuen_US
dc.date.accessioned2021-7-19T07:39:07Z
dc.date.available2021-7-19T07:39:07Z
dc.date.issued2021
dc.identifier.urihttp://ir.lib.ncu.edu.tw:88/thesis/view_etd.asp?URN=108523057
dc.contributor.department通訊工程學系zh_TW
DC.description國立中央大學zh_TW
DC.descriptionNational Central Universityen_US
dc.description.abstract拍攝時不論是相機或被拍攝物的晃動,都易使拍攝的影像有著運動模糊(motion blur),造成觀賞體驗受嚴重的影響,或是視覺追蹤(visual tracking)和物件偵測(object detection)等效能下降。而現有基於深度學習的方案往往得耗費高網路參數量或記憶體,以換取網路生成高品質的去模糊影像。SRN^+為現有文獻中,網路參數量較低且效果甚佳的基於深度學習之影像去模糊網路方案,因此本論文提出以SRN^+的網路架構作為生成器(generator),並於訓練階段加入以虛擬標籤(pseudo label)輔助之鑑別器(discriminator),提升生成器去模糊影像的品質。和 standard GAN(generative adversarial network)不同,虛擬標籤輔助之生成對抗網路會同時被提供去模糊影像和對應的清晰影像,使鑑別器(discriminator)能給予生成器的優化更準確的損失,提升去模糊影像細節的回復。以漏斗式柔和標籤(funnel soft labelling)代替二元(binary)標籤,降低鑑別器的學習能力,使生成器較不會面臨梯度消失,穩定生成對抗網路的訓練。除此之外,本論文提出對於不同尺度(scale)的損失函數給予不一樣的權重,使網路能對於大尺度階段的去模糊影像之損失,給予更大的權重,並且最大尺度的損失函數以均方誤差(mean squared error, MSE)取代平均絕對誤差(mean absolute error, MAE),使去模糊影像更加的清晰。在測試階段只需使用生成器輸出去模糊影像,因此本論文所提方案的網路參數和計算複雜度皆和SRN^+相同,對於GoPro資料集,峰值訊噪比(peak signal-to-noise ratio, PSNR)比SRN^+高0.51dB,結構相似性(structural similarity index measure, SSIM)高0.005,和現今頂尖方案MPRNet最輕量化的版本1-stage相比,峰值訊噪比高於1dB,網路參數量為MPRNet(1-stage)的7/10。zh_TW
dc.description.abstractCamera shake or moving objects causes blurred images. It would lead to the awful visual experience or decrease accuracy of visual tracking and object detection. Existing deep learning based approaches usually requires more network parameters or memory usage to generate high-quality deblurred images. SRN^+ is an existing deep learning based single image deblurring network which has a low amount of network parameters and good performance. Therefore, this paper proposes to adopt SRN^+ as the generator, and input training samples with pseudo labels to the discriminator to improve the quality of deblurred images from the generator at the training stage. Different form standard GAN (generative adversarial network), the proposed generative adversarial network with pseudo labels is provided with the deblurred image and the corresponding sharp image at the same time. Accordingly, the discriminator gives the more accurate loss to guide optimization of the generator to restore details of deblurred images. Use funnel soft labelling instead of binary label to reduce the learning ability of the discriminator, so that the generator will avoid gradient vanishing, and stabilize the training of the generative adversarial network. In addition, this paper proposes to assign different weights to loss functions of different scales, where a larger weight is assigned to the loss of the deblurred image at the large-scale stage. The loss function of the largest scale adopts mean squared error (MSE) instead of mean absolute error (MAE) to make the deblurred image more sharp. At the test stage, the generator generates the deblurred image where the amount of network parameters and computational complexity of the proposed scheme are the same as SRN^+. For the GoPro dataset, the proposed scheme is 0.51dB higher than SRN^+ on the peak signal-to-noise ratio (PSNR), and it is 0.005 higher than SRN^+ on the structural similarity index measure (SSIM). Compared with the lightest version (i.e., 1-stage) of the state-of-the-art deblurring net MPRNet, the proposed scheme is 1dB higher on PSNR.en_US
DC.subject單影像去模糊zh_TW
DC.subject生成對抗網路zh_TW
DC.subject尺度遞迴網路zh_TW
DC.subject虛擬標籤zh_TW
DC.subjectsingle image deblurringen_US
DC.subjectgenerative adversarial networken_US
DC.subjectscale-recurrent networken_US
DC.subjectpseudo labelen_US
DC.title基於尺度遞迴網路的生成對抗網路之 影像去模糊zh_TW
dc.language.isozh-TWzh-TW
DC.titleScale-recurrent Network Based Generative Adversarial Network for Image Deblurringen_US
DC.type博碩士論文zh_TW
DC.typethesisen_US
DC.publisherNational Central Universityen_US

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