2021
DOI: 10.1049/ipr2.12364
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Deep coordinate attention network for single image super‐resolution

Abstract: Deep learning techniques and deep networks have recently been extensively studied and widely applied to single image super-resolution (SR). Among them, channel attention has garnered the most focus owing to its significant boost in the presentational power of a convolutional neural network. However, the original channel attention neglects the critical importance of the positional information, thus imposing performance limitations. Here, a novel perspective, namely, a coordinate attention mechanism, is explored… Show more

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Cited by 33 publications
(18 citation statements)
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“…erefore, on the basis of analyzing the modeling characteristics and problems of traditional forecasting methods, this paper introduces the cultural space layout planning forecasting method based on the forward three-layer neural network model and analyzes the neural network for establishing time series and regression analysis of two types of data. Taking the time series type as an example, the detailed technical design of the cultural space demand forecasting model based on the forward three-layer neural network is carried out, including network model selection, network structure design, sample construction, parameter setting, select the region and historical total population forecast as verification examples, establish a linear neural network model of population forecast for simulation forecasting, to verify the forecasting ability of the forward three-layer neural network model, and compare and analyze the artificial neural network Similarities and differences between network prediction models and traditional prediction methods [12][13][14].…”
Section: Introductionmentioning
confidence: 99%
“…erefore, on the basis of analyzing the modeling characteristics and problems of traditional forecasting methods, this paper introduces the cultural space layout planning forecasting method based on the forward three-layer neural network model and analyzes the neural network for establishing time series and regression analysis of two types of data. Taking the time series type as an example, the detailed technical design of the cultural space demand forecasting model based on the forward three-layer neural network is carried out, including network model selection, network structure design, sample construction, parameter setting, select the region and historical total population forecast as verification examples, establish a linear neural network model of population forecast for simulation forecasting, to verify the forecasting ability of the forward three-layer neural network model, and compare and analyze the artificial neural network Similarities and differences between network prediction models and traditional prediction methods [12][13][14].…”
Section: Introductionmentioning
confidence: 99%
“…Application in real-world cases . To further test the performance of our method in real-world scenes, we captured three remote-sensing images from the Landsat-8 satellite [ 64 , 65 , 66 , 67 ], which are the landscapes around Xuanwu Lake, Xinjizhou National Wetland Park, and Lukou International Airport in Nanjing. The original size of these images is 900 × 619.…”
Section: Remote Sensing Image Super-resolutionmentioning
confidence: 99%
“…But SE only encodes the information between channels, ignoring the equally important spatial relationship, which is used to capture objects in vision tasks. Spatial information is also crucial in capturing target structures in visual tasks [23]. Later, Woo et al proposed a Convolutional Block Attention Module (CBAM) [24].…”
Section: B Coordinate Attention Modulmentioning
confidence: 99%