Reduction of Compression Artifacts Using a Densely Cascading Image Restoration Network
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초록

Since high quality realistic media are widely used in various computer vision applications, image compression is one of the essential technologies to enable real-time applications. Image compression generally causes undesired compression artifacts, such as blocking artifacts and ringing effects. In this study, we propose a densely cascading image restoration network (DCRN), which consists of an input layer, a densely cascading feature extractor, a channel attention block, and an output layer. The densely cascading feature extractor has three densely cascading (DC) blocks, and each DC block contains two convolutional layers, five dense layers, and a bottleneck layer. To optimize the proposed network architectures, we investigated the trade-off between quality enhancement and network complexity. Experimental results revealed that the proposed DCRN can achieve a better peak signal-to-noise ratio and structural similarity index measure for compressed joint photographic experts group (JPEG) images compared to the previous methods.

키워드

computer visiondeep learningconvolutional neural networkimage processingimage restorationsingle image artifacts reductiondense networksresidual networkschannel attention networksQUALITY ASSESSMENTSUPERRESOLUTIONDEBLOCKINGDIFFUSIONFRAMEWORK
제목
Reduction of Compression Artifacts Using a Densely Cascading Image Restoration Network
저자
Lee, YoohoPark, Sang-hyoRhee, EunjunKim, Byung-GyuJun, Dongsan
DOI
10.3390/app11177803
발행일
2021-09
유형
Article
저널명
APPLIED SCIENCES-BASEL
11
17
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1 ~ 13