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Published in: Neural Computing and Applications 18/2020

20-11-2019 | Deep Learning Approaches for RealTime Image Super Resolution (DLRSR)

CASR: a context-aware residual network for single-image super-resolution

Authors: Yirui Wu, Xiaozhong Ji, Wanting Ji, Yan Tian, Helen Zhou

Published in: Neural Computing and Applications | Issue 18/2020

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Abstract

With the significant power of deep learning architectures, researchers have made much progress on super-resolution in the past few years. However, due to low representational ability of feature maps extracted from nature scene images, directly applying deep learning architectures for super-resolution could result in poor visual effects. Essentially, unique characteristics like low-frequency information should be emphasized for better shape reconstruction, other than treated equally across different patches and channels. To ease this problem, we propose a lightweight context-aware deep residual network named as CASR network, which appropriately encodes channel and spatial attention information to construct context-aware feature map for single-image super-resolution. We firstly design a task-specified inception block with a novel structure of astrous filters and specially chosen kernel size to extract multi-level information from low-resolution images. Then, a Dual-Attention ResNet module is applied to capture context information by dually connecting spatial and channel attention schemes. With high representational ability of context-aware feature map, CASR can accurately and efficiently generate high-resolution images. Experiments on several popular datasets show the proposed method has achieved better visual improvements and superior efficiencies than most of the existing studies.

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Literature
1.
go back to reference Anderson P, He X, Buehler C, Teney D, Johnson M, Gould S, Zhang L (2018) Bottom-up and top-down attention for image captioning and visual question answering. In: Proceedings of 2018 IEEE conference on computer vision and pattern recognition, pp 6077–6086 Anderson P, He X, Buehler C, Teney D, Johnson M, Gould S, Zhang L (2018) Bottom-up and top-down attention for image captioning and visual question answering. In: Proceedings of 2018 IEEE conference on computer vision and pattern recognition, pp 6077–6086
2.
go back to reference Bevilacqua M, Roumy A, Guillemot C, Alberi-Morel ML (2012) Low-complexity single-image super-resolution based on nonnegative neighbor embedding. In: Proceedings of british machine vision conference Bevilacqua M, Roumy A, Guillemot C, Alberi-Morel ML (2012) Low-complexity single-image super-resolution based on nonnegative neighbor embedding. In: Proceedings of british machine vision conference
3.
go back to reference Bulat A, Yang J, Tzimiropoulos G (2018) To learn image super-resolution, use a gan to learn how to do image degradation first. In: Proceedings of European conference on computer vision, pp 185–200 Bulat A, Yang J, Tzimiropoulos G (2018) To learn image super-resolution, use a gan to learn how to do image degradation first. In: Proceedings of European conference on computer vision, pp 185–200
4.
go back to reference Cao F, Li K (2018) A new method for image super-resolution with multi-channel constraints. Knowl Based Syst 146:118–128CrossRef Cao F, Li K (2018) A new method for image super-resolution with multi-channel constraints. Knowl Based Syst 146:118–128CrossRef
7.
go back to reference Chen R, Qu Y, Li C, Zeng K, Xie Y, Li C (2019) Single-image super-resolution via joint statistical models-guided deep auto-encoder network. Neural Computing and Applications pp 1–11 Chen R, Qu Y, Li C, Zeng K, Xie Y, Li C (2019) Single-image super-resolution via joint statistical models-guided deep auto-encoder network. Neural Computing and Applications pp 1–11
8.
go back to reference Dong C, Loy CC, He K, Tang X (2014) Learning a deep convolutional network for image super-resolution. In: Proceedings of European conference on computer vision, pp 184–199 Dong C, Loy CC, He K, Tang X (2014) Learning a deep convolutional network for image super-resolution. In: Proceedings of European conference on computer vision, pp 184–199
9.
go back to reference Dong C, Loy CC, Tang X (2016) Accelerating the super-resolution convolutional neural network. In: Proceedings of European conference on computer vision. Springer, pp 391–407 Dong C, Loy CC, Tang X (2016) Accelerating the super-resolution convolutional neural network. In: Proceedings of European conference on computer vision. Springer, pp 391–407
10.
go back to reference Fujimoto A, Ogawa T, Yamamoto K, Matsui Y, Yamasaki T, Aizawa K (2016) Manga109 dataset and creation of metadata. In: Proceedings of the 1st international workshop on comics analysis, processing and understanding, p 2 Fujimoto A, Ogawa T, Yamamoto K, Matsui Y, Yamasaki T, Aizawa K (2016) Manga109 dataset and creation of metadata. In: Proceedings of the 1st international workshop on comics analysis, processing and understanding, p 2
11.
go back to reference Gong W, Qi L, Xu Y (2018) Privacy-aware multidimensional mobile service quality prediction and recommendation in distributed fog environment. Wireless Communications and Mobile Computing Gong W, Qi L, Xu Y (2018) Privacy-aware multidimensional mobile service quality prediction and recommendation in distributed fog environment. Wireless Communications and Mobile Computing
12.
go back to reference Goodfellow I, Pouget-Abadie J, Mirza M, Xu B, Warde-Farley D, Ozair S, Courville A, Bengio Y (2014) Generative adversarial nets. In: Proceedings of Neural Information Processing Systems, pp 2672–2680 Goodfellow I, Pouget-Abadie J, Mirza M, Xu B, Warde-Farley D, Ozair S, Courville A, Bengio Y (2014) Generative adversarial nets. In: Proceedings of Neural Information Processing Systems, pp 2672–2680
13.
go back to reference Haris M, Shakhnarovich G, Ukita N (2018) Deep back-projection networks for super-resolution. In: Proceedings of computer vision and pattern recognition, pp 1664–1673 Haris M, Shakhnarovich G, Ukita N (2018) Deep back-projection networks for super-resolution. In: Proceedings of computer vision and pattern recognition, pp 1664–1673
14.
go back to reference He T, Huang W, Qiao Y, Yao J (2016) Text-attentional convolutional neural network for scene text detection. IEEE Trans Image Process 25(6):2529–2541MathSciNetCrossRef He T, Huang W, Qiao Y, Yao J (2016) Text-attentional convolutional neural network for scene text detection. IEEE Trans Image Process 25(6):2529–2541MathSciNetCrossRef
15.
go back to reference Hu Y, Li J, Huang Y, Gao X (2018) Channel-wise and spatial feature modulation network for single image super-resolution. arXiv preprint arXiv:180911130 Hu Y, Li J, Huang Y, Gao X (2018) Channel-wise and spatial feature modulation network for single image super-resolution. arXiv preprint arXiv:​180911130
16.
go back to reference Huang J, Singh A, Ahuja N (2015) Single image super-resolution from transformed self-exemplars. In: Proceedings of IEEE conference on computer vision and pattern recognition, pp 5197–5206 Huang J, Singh A, Ahuja N (2015) Single image super-resolution from transformed self-exemplars. In: Proceedings of IEEE conference on computer vision and pattern recognition, pp 5197–5206
17.
go back to reference Huang JB, Singh A, Ahuja N (2015) Single image super-resolution from transformed self-exemplars. In: Proceedings of computer vision and pattern recognition, pp 5197–5206 Huang JB, Singh A, Ahuja N (2015) Single image super-resolution from transformed self-exemplars. In: Proceedings of computer vision and pattern recognition, pp 5197–5206
18.
go back to reference Kim J, Kwon Lee J, Mu Lee K (2016) Accurate image super-resolution using very deep convolutional networks. In: Proceedings of IEEE conference on computer vision and pattern recognition, pp 1646–1654 Kim J, Kwon Lee J, Mu Lee K (2016) Accurate image super-resolution using very deep convolutional networks. In: Proceedings of IEEE conference on computer vision and pattern recognition, pp 1646–1654
19.
go back to reference Kim J, Kwon Lee J, Mu Lee K (2016) Deeply-recursive convolutional network for image super-resolution. In: Proceedings of the IEEE conference on computer vision and pattern recognition, pp 1637–1645 Kim J, Kwon Lee J, Mu Lee K (2016) Deeply-recursive convolutional network for image super-resolution. In: Proceedings of the IEEE conference on computer vision and pattern recognition, pp 1637–1645
20.
go back to reference Kim JH, Choi JH, Cheon M, Lee JS (2018) Ram: Residual attention module for single image super-resolution. arXiv preprint arXiv:181112043 Kim JH, Choi JH, Cheon M, Lee JS (2018) Ram: Residual attention module for single image super-resolution. arXiv preprint arXiv:​181112043
21.
go back to reference Krizhevsky A, Sutskever I, Hinton GE (2012) Imagenet classification with deep convolutional neural networks. In: Proceedings of neural information processing systems, pp 1097–1105 Krizhevsky A, Sutskever I, Hinton GE (2012) Imagenet classification with deep convolutional neural networks. In: Proceedings of neural information processing systems, pp 1097–1105
22.
go back to reference Lai W, Huang J, Ahuja N, Yang M (2017) Fast and accurate image super-resolution with deep Laplacian pyramid networks. CoRR abs/1710.01992 Lai W, Huang J, Ahuja N, Yang M (2017) Fast and accurate image super-resolution with deep Laplacian pyramid networks. CoRR abs/1710.01992
23.
go back to reference Lai WS, Huang JB, Ahuja N, Yang MH (2017) Deep laplacian pyramid networks for fast and accurate super-resolution. In: Proceedings of computer vision and pattern recognition Lai WS, Huang JB, Ahuja N, Yang MH (2017) Deep laplacian pyramid networks for fast and accurate super-resolution. In: Proceedings of computer vision and pattern recognition
24.
go back to reference Ledig C, Theis L, Huszár F, Caballero J, Cunningham A, Acosta A, Aitken A, Tejani A, Totz J, Wang Z, et al (2017) Photo-realistic single image super-resolution using a generative adversarial network. arXiv preprint Ledig C, Theis L, Huszár F, Caballero J, Cunningham A, Acosta A, Aitken A, Tejani A, Totz J, Wang Z, et al (2017) Photo-realistic single image super-resolution using a generative adversarial network. arXiv preprint
25.
go back to reference Lim B, Son S, Kim H, Nah S, Lee KM (2017) Enhanced deep residual networks for single image super-resolution. In: Proceedings of computer vision and pattern recognition workshops, pp 1132–1140 Lim B, Son S, Kim H, Nah S, Lee KM (2017) Enhanced deep residual networks for single image super-resolution. In: Proceedings of computer vision and pattern recognition workshops, pp 1132–1140
26.
go back to reference Liu H, Kou H, Yan C, Qi L (2019) Link prediction in paper citation network to construct paper correlation graph. EURASIP J Wirel Commun Netw 1:233CrossRef Liu H, Kou H, Yan C, Qi L (2019) Link prediction in paper citation network to construct paper correlation graph. EURASIP J Wirel Commun Netw 1:233CrossRef
27.
go back to reference Liu S, Huang D, Wang Y (2018) Receptive field block net for accurate and fast object detection. In: Proceedings of European conference on computer vision, pp 404–419 Liu S, Huang D, Wang Y (2018) Receptive field block net for accurate and fast object detection. In: Proceedings of European conference on computer vision, pp 404–419
28.
go back to reference Martin D, Fowlkes C, Tal D, Malik J (2001) A database of human segmented natural images and its application to evaluating segmentation algorithms and measuring ecological statistics. Proc Int Conf Comput Vis 2:416–423 Martin D, Fowlkes C, Tal D, Malik J (2001) A database of human segmented natural images and its application to evaluating segmentation algorithms and measuring ecological statistics. Proc Int Conf Comput Vis 2:416–423
29.
go back to reference Mnih V, Heess N, Graves A, Kavukcuoglu K (2014) Recurrent models of visual attention. In: Proceedings of neural information processing systems, pp 2204–2212 Mnih V, Heess N, Graves A, Kavukcuoglu K (2014) Recurrent models of visual attention. In: Proceedings of neural information processing systems, pp 2204–2212
30.
go back to reference Nguyen T, Le T, Vu H, Phung DQ (2017) Dual discriminator generative adversarial nets. In: Proceedings of Advances in neural information processing systems, pp 2670–2680 Nguyen T, Le T, Vu H, Phung DQ (2017) Dual discriminator generative adversarial nets. In: Proceedings of Advances in neural information processing systems, pp 2670–2680
31.
go back to reference Qi L, Dou W, Chen J (2016) Weighted principal component analysis-based service selection method for multimedia services in cloud. Computing 98(1–2):195–214MathSciNetCrossRef Qi L, Dou W, Chen J (2016) Weighted principal component analysis-based service selection method for multimedia services in cloud. Computing 98(1–2):195–214MathSciNetCrossRef
32.
go back to reference Qi L, Xu X, Dou W, Yu J, Zhou Z, Zhang X (2016) Time-aware IoE service recommendation on sparse data. Mob Inf Sys 2016:4397061:1–4397061:12 Qi L, Xu X, Dou W, Yu J, Zhou Z, Zhang X (2016) Time-aware IoE service recommendation on sparse data. Mob Inf Sys 2016:4397061:1–4397061:12
33.
go back to reference Qi L, Dai P, Yu J, Zhou Z, Xu Y (2017) “time-location-frequency”-aware internet of things service selection based on historical records. Int J Distr Sens Netw 13(1):1–9CrossRef Qi L, Dai P, Yu J, Zhou Z, Xu Y (2017) “time-location-frequency”-aware internet of things service selection based on historical records. Int J Distr Sens Netw 13(1):1–9CrossRef
34.
go back to reference Qi L, Zhang X, Dou W, Ni Q (2017) A distributed locality-sensitive hashing-based approach for cloud service recommendation from multi-source data. IEEE J Sel Areas Commun 35(11):2616–2624CrossRef Qi L, Zhang X, Dou W, Ni Q (2017) A distributed locality-sensitive hashing-based approach for cloud service recommendation from multi-source data. IEEE J Sel Areas Commun 35(11):2616–2624CrossRef
35.
go back to reference Qi L, Dou W, Wang W, Li G, Yu H, Wan S (2018) Dynamic mobile crowdsourcing selection for electricity load forecasting. IEEE Access 6:46926–46937CrossRef Qi L, Dou W, Wang W, Li G, Yu H, Wan S (2018) Dynamic mobile crowdsourcing selection for electricity load forecasting. IEEE Access 6:46926–46937CrossRef
37.
go back to reference Qi L, Wang R, Hu C, Li S, He Q, Xu X (2019) Time-aware distributed service recommendation with privacy-preservation. Inf Sci 480:354–364CrossRef Qi L, Wang R, Hu C, Li S, He Q, Xu X (2019) Time-aware distributed service recommendation with privacy-preservation. Inf Sci 480:354–364CrossRef
38.
go back to reference Schulter S, Leistner C, Bischof H (2015) Fast and accurate image upscaling with super-resolution forests. In: Proceedings of IEEE conference on computer vision and pattern recognition, pp 3791–3799 Schulter S, Leistner C, Bischof H (2015) Fast and accurate image upscaling with super-resolution forests. In: Proceedings of IEEE conference on computer vision and pattern recognition, pp 3791–3799
39.
go back to reference Shamsolmoali P, Li X, Wang R (2019) Single image resolution enhancement by efficient dilated densely connected residual network. Signal Process Image Commun 79:13–23 Shamsolmoali P, Li X, Wang R (2019) Single image resolution enhancement by efficient dilated densely connected residual network. Signal Process Image Commun 79:13–23
40.
go back to reference Shamsolmoali P, Zareapoor M, Wang R, Jain DK, Yang J (2019) G-GANISR: gradual generative adversarial network for image super resolution. Neurocomputing 366:140–153CrossRef Shamsolmoali P, Zareapoor M, Wang R, Jain DK, Yang J (2019) G-GANISR: gradual generative adversarial network for image super resolution. Neurocomputing 366:140–153CrossRef
41.
go back to reference Tai Y, Yang J, Liu X (2017) Image super-resolution via deep recursive residual network. In: Proceedings of computer vision and pattern recognitio, pp 2790–2798 Tai Y, Yang J, Liu X (2017) Image super-resolution via deep recursive residual network. In: Proceedings of computer vision and pattern recognitio, pp 2790–2798
42.
go back to reference Timofte R, De Smet V, Van Gool L (2014) A+: Adjusted anchored neighborhood regression for fast super-resolution. In: Proceedings of Asian conference on computer vision. Springer, pp 111–126 Timofte R, De Smet V, Van Gool L (2014) A+: Adjusted anchored neighborhood regression for fast super-resolution. In: Proceedings of Asian conference on computer vision. Springer, pp 111–126
43.
go back to reference Timofte R, Agustsson E, Van Gool L, Yang MH, Zhang L (2017) Ntire 2017 challenge on single image super-resolution: methods and results. In: Proceedings of computer vision and pattern recognition workshops, pp 114–125 Timofte R, Agustsson E, Van Gool L, Yang MH, Zhang L (2017) Ntire 2017 challenge on single image super-resolution: methods and results. In: Proceedings of computer vision and pattern recognition workshops, pp 114–125
44.
go back to reference Tong T, Li G, Liu X, Gao Q (2017) Image super-resolution using dense skip connections. In: Proceedings of international conference on computer vision, IEEE, pp 4809–4817 Tong T, Li G, Liu X, Gao Q (2017) Image super-resolution using dense skip connections. In: Proceedings of international conference on computer vision, IEEE, pp 4809–4817
45.
go back to reference Wang Y, Perazzi F, McWilliams B, Sorkine-Hornung A, Sorkine-Hornung O, Schroers C (2018) A fully progressive approach to single-image super-resolution. In: Proceedings of IEEE conference on computer vision and pattern recognition workshops, pp 864–873 Wang Y, Perazzi F, McWilliams B, Sorkine-Hornung A, Sorkine-Hornung O, Schroers C (2018) A fully progressive approach to single-image super-resolution. In: Proceedings of IEEE conference on computer vision and pattern recognition workshops, pp 864–873
46.
go back to reference Wang Z, Liu D, Yang J, Han W, Huang TS (2015) Deep networks for image super-resolution with sparse prior. In: Proceedings of IEEE international conference on computer vision, pp 370–378 Wang Z, Liu D, Yang J, Han W, Huang TS (2015) Deep networks for image super-resolution with sparse prior. In: Proceedings of IEEE international conference on computer vision, pp 370–378
47.
go back to reference Woo S, Park J, Lee JY, So Kweon I (2018) Cbam: Convolutional block attention module. In: Proceedings of European conference on computer vision, pp 3–19 Woo S, Park J, Lee JY, So Kweon I (2018) Cbam: Convolutional block attention module. In: Proceedings of European conference on computer vision, pp 3–19
48.
go back to reference Xu X, Fu S, Qi L, Zhang X, Liu Q, He Q, Li S (2018) An IoT-oriented data placement method with privacy preservation in cloud environment. J Netw Comput Appl 124:148–157CrossRef Xu X, Fu S, Qi L, Zhang X, Liu Q, He Q, Li S (2018) An IoT-oriented data placement method with privacy preservation in cloud environment. J Netw Comput Appl 124:148–157CrossRef
49.
go back to reference Xu X, Li Y, Huang T, Xue Y, Peng K, Qi L, Dou W (2019) An energy-aware computation offloading method for smart edge computing in wireless metropolitan area networks. J Netw Comput Appl 133:75–85CrossRef Xu X, Li Y, Huang T, Xue Y, Peng K, Qi L, Dou W (2019) An energy-aware computation offloading method for smart edge computing in wireless metropolitan area networks. J Netw Comput Appl 133:75–85CrossRef
50.
go back to reference Xu X, Liu Q, Luo Y, Peng K, Zhang X, Meng S, Qi L (2019) A computation offloading method over big data for iot-enabled cloud-edge computing. Future Gener Comput Syst 96:89–100CrossRef Xu X, Liu Q, Luo Y, Peng K, Zhang X, Meng S, Qi L (2019) A computation offloading method over big data for iot-enabled cloud-edge computing. Future Gener Comput Syst 96:89–100CrossRef
51.
go back to reference Xu X, Xue Y, Qi L, Yuan Y, Zhang X, Umer T, Wan S (2019) An edge computing-enabled computation offloading method with privacy preservation for internet of connected vehicles. Future Gener Comput Syst 95:522–533CrossRef Xu X, Xue Y, Qi L, Yuan Y, Zhang X, Umer T, Wan S (2019) An edge computing-enabled computation offloading method with privacy preservation for internet of connected vehicles. Future Gener Comput Syst 95:522–533CrossRef
52.
go back to reference Yan C, Cui X, Qi L, Xu X, Zhang X (2018) Privacy-aware data publishing and integration for collaborative service recommendation. IEEE Access 6:43021–43028CrossRef Yan C, Cui X, Qi L, Xu X, Zhang X (2018) Privacy-aware data publishing and integration for collaborative service recommendation. IEEE Access 6:43021–43028CrossRef
53.
go back to reference Yeung S, Russakovsky O, Jin N, Andriluka M, Mori G, Li F (2018) Every moment counts: Dense detailed labeling of actions in complex videos. Int J Comput Vis 126(2–4):375–389MathSciNetCrossRef Yeung S, Russakovsky O, Jin N, Andriluka M, Mori G, Li F (2018) Every moment counts: Dense detailed labeling of actions in complex videos. Int J Comput Vis 126(2–4):375–389MathSciNetCrossRef
55.
go back to reference Zeiler MD, Fergus R (2014) Visualizing and understanding convolutional networks. In: Proceedings of European conference on computer vision, pp 818–833 Zeiler MD, Fergus R (2014) Visualizing and understanding convolutional networks. In: Proceedings of European conference on computer vision, pp 818–833
56.
go back to reference Zeyde R, Elad M, Protter M (2010) On single image scale-up using sparse-representations. In: Proceedings of international conference on curves and surfaces. Springer, pp 711–730 Zeyde R, Elad M, Protter M (2010) On single image scale-up using sparse-representations. In: Proceedings of international conference on curves and surfaces. Springer, pp 711–730
57.
go back to reference Zhang K, Zuo W, Zhang L (2018) Learning a single convolutional super-resolution network for multiple degradations. In: Proceedings of IEEE conference on computer vision and pattern recognition, pp 3262–3271 Zhang K, Zuo W, Zhang L (2018) Learning a single convolutional super-resolution network for multiple degradations. In: Proceedings of IEEE conference on computer vision and pattern recognition, pp 3262–3271
58.
go back to reference Zhang Y, Li K, Li K, Wang L, Zhong B, Fu Y (2018) Image super-resolution using very deep residual channel attention networks. In: Proceedings of European conference on computer vision, pp 286–301 Zhang Y, Li K, Li K, Wang L, Zhong B, Fu Y (2018) Image super-resolution using very deep residual channel attention networks. In: Proceedings of European conference on computer vision, pp 286–301
59.
go back to reference Zhang Y, Tian Y, Kong Y, Zhong B, Fu Y (2018) Residual dense network for image super-resolution. In: Proceedings of IEEE conference on computer vision and pattern recognition, pp 2472–2481 Zhang Y, Tian Y, Kong Y, Zhong B, Fu Y (2018) Residual dense network for image super-resolution. In: Proceedings of IEEE conference on computer vision and pattern recognition, pp 2472–2481
60.
go back to reference Zhao X, Sang L, Ding G, Han J, Di N, Yan C (2019) Recurrent attention model for pedestrian attribute recognition. In: Proceedings of the thirty-third AAAI conference on artificial intelligence, pp 9275–9282 Zhao X, Sang L, Ding G, Han J, Di N, Yan C (2019) Recurrent attention model for pedestrian attribute recognition. In: Proceedings of the thirty-third AAAI conference on artificial intelligence, pp 9275–9282
61.
go back to reference Zheng H, Wang X, Gao X (2018) Fast and accurate single image super-resolution via information distillation network. In: Proceedings of IEEE conference on computer vision and pattern recognition, pp 723–731 Zheng H, Wang X, Gao X (2018) Fast and accurate single image super-resolution via information distillation network. In: Proceedings of IEEE conference on computer vision and pattern recognition, pp 723–731
Metadata
Title
CASR: a context-aware residual network for single-image super-resolution
Authors
Yirui Wu
Xiaozhong Ji
Wanting Ji
Yan Tian
Helen Zhou
Publication date
20-11-2019
Publisher
Springer London
Published in
Neural Computing and Applications / Issue 18/2020
Print ISSN: 0941-0643
Electronic ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-019-04609-8

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