dc.contributor.author
Behjati, Parichehr
dc.contributor.author
Rodríguez López, Pau
dc.contributor.author
Fernández Tena, Carles
dc.contributor.author
Mehri, Armin
dc.contributor.author
Roca i Marvà, Francesc Xavier
dc.contributor.author
Ozawa, Seiichi
dc.contributor.author
Gonzàlez, Jordi
dc.date.accessioned
2025-08-31T18:20:12Z
dc.date.available
2025-08-31T18:20:12Z
dc.identifier
https://ddd.uab.cat/record/311807
dc.identifier
urn:10.1109/ACCESS.2022.3176441
dc.identifier
urn:oai:ddd.uab.cat:311807
dc.identifier
urn:oai:egreta.uab.cat:publications/19a75a77-6814-457f-a6aa-92c81cf9b7a6
dc.identifier
urn:pure_id:200116120
dc.identifier
urn:scopus_id:85130497014
dc.identifier
urn:wos_id:000809767700001
dc.identifier
urn:articleid:21693536v10p57383
dc.identifier.uri
https://hdl.handle.net/2072/485386
dc.description.abstract
Recently, deep convolutional neural networks (CNNs) have provided outstanding performance in single image super-resolution (SISR). Despite their remarkable performance, the lack of high-frequency information in the recovered images remains a core problem. Moreover, as the networks increase in depth and width, deep CNN-based SR methods are faced with the challenge of computational complexity in practice. A promising and under-explored solution is to adapt the amount of compute based on the different frequency bands of the input. To this end, we present a novel Frequency-based Enhancement Block (FEB) which explicitly enhances the information of high frequencies while forwarding low-frequencies to the output. In particular, this block efficiently decomposes features into low- and high-frequency and assigns more computation to high-frequency ones. Thus, it can help the network generate more discriminative representations by explicitly recovering finer details. Our FEB design is simple and generic and can be used as a direct replacement of commonly used SR blocks with no need to change network architectures. We experimentally show that when replacing SR blocks with FEB we consistently improve the reconstruction error, while reducing the number of parameters in the model. Moreover, we propose a lightweight SR model - Frequency-based Enhancement Network (FENet) - based on FEB that matches the performance of larger models. Extensive experiments demonstrate that our proposal performs favorably against the state-of-the-art SR algorithms in terms of visual quality, memory footprint, and inference time.
dc.format
application/pdf
dc.relation
Agencia Estatal de Investigación PID2020-120311RB-I00
dc.relation
IEEE Access ; Vol. 10 (May 2022), p. 57383-57397
dc.rights
Aquest document està subjecte a una llicència d'ús Creative Commons. Es permet la reproducció total o parcial, la distribució, la comunicació pública de l'obra i la creació d'obres derivades, fins i tot amb finalitats comercials, sempre i quan es reconegui l'autoria de l'obra original.
dc.rights
https://creativecommons.org/licenses/by/4.0/
dc.subject
Frequency-based methods
dc.subject
Lightweight architectures
dc.subject
Single image super-resolution
dc.title
Frequency-Based Enhancement Network for Efficient Super-Resolution