{"title":"基于简单基帧制导的增强残差网络用于突发图像超分辨率","authors":"Anderson Nogueira Cotrim , Gerson Barbosa , Cid Adinam Nogueira Santos , Helio Pedrini","doi":"10.1016/j.imavis.2025.105444","DOIUrl":null,"url":null,"abstract":"<div><div>Burst or multi-frame image super-resolution (MFSR) has emerged as a critical area in computer vision, aimed at reconstructing high-resolution images from low-resolution bursts. Unlike single-image super-resolution (SISR), which has been extensively studied, MFSR leverages information from multiple shifted frames in order to mitigate the ill-posed nature of SISR. The rapid advancement in the capabilities of handheld devices, including enhanced processing power and faster image capture rates also add a layer of relevance in this field. In our previous work, we proposed a simple yet effective deep learning method tailored for RAW images, called Simple Base Frame Burst (SBFBurst). This method, based on residual convolutional architecture, demonstrated significant performance improvements by incorporating base frame guidance mechanisms such as skip frame connections and concatenation of the base frame alongside the network. Despite the promising outcomes obtained, given the outlined context and the limited investigation compared to SISR, it is evident that further extensions and experiments are required to propel the field of MFSR forward. In this paper, we extend our recent work on SBFBurst by conducting a comprehensive analysis of the method from various perspectives. Our primary contribution lies in adapting and testing the architecture to handle both RAW Bayer pattern images and RGB images, allowing the evaluation using the novel RealBSR-RGB dataset. Our experiments revealed that SBFBurst still consistently outperforms existing state-of-the-art approaches both quantitatively and qualitatively, even after the introduction of a new method, FBANet, for comparison. We also extended our experiments to assess the impact of architecture parameters, model generalization, and its capacity to leverage complementary information. These exploratory extensions may open new avenues for advance in this field. Our code and models are publicly available at <span><span>https://github.com/AndersonCotrim/SBFBurst</span><svg><path></path></svg></span>.</div></div>","PeriodicalId":50374,"journal":{"name":"Image and Vision Computing","volume":"155 ","pages":"Article 105444"},"PeriodicalIF":4.2000,"publicationDate":"2025-02-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Enhanced residual network for burst image super-resolution using simple base frame guidance\",\"authors\":\"Anderson Nogueira Cotrim , Gerson Barbosa , Cid Adinam Nogueira Santos , Helio Pedrini\",\"doi\":\"10.1016/j.imavis.2025.105444\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><div>Burst or multi-frame image super-resolution (MFSR) has emerged as a critical area in computer vision, aimed at reconstructing high-resolution images from low-resolution bursts. Unlike single-image super-resolution (SISR), which has been extensively studied, MFSR leverages information from multiple shifted frames in order to mitigate the ill-posed nature of SISR. The rapid advancement in the capabilities of handheld devices, including enhanced processing power and faster image capture rates also add a layer of relevance in this field. In our previous work, we proposed a simple yet effective deep learning method tailored for RAW images, called Simple Base Frame Burst (SBFBurst). This method, based on residual convolutional architecture, demonstrated significant performance improvements by incorporating base frame guidance mechanisms such as skip frame connections and concatenation of the base frame alongside the network. Despite the promising outcomes obtained, given the outlined context and the limited investigation compared to SISR, it is evident that further extensions and experiments are required to propel the field of MFSR forward. In this paper, we extend our recent work on SBFBurst by conducting a comprehensive analysis of the method from various perspectives. Our primary contribution lies in adapting and testing the architecture to handle both RAW Bayer pattern images and RGB images, allowing the evaluation using the novel RealBSR-RGB dataset. Our experiments revealed that SBFBurst still consistently outperforms existing state-of-the-art approaches both quantitatively and qualitatively, even after the introduction of a new method, FBANet, for comparison. We also extended our experiments to assess the impact of architecture parameters, model generalization, and its capacity to leverage complementary information. These exploratory extensions may open new avenues for advance in this field. 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引用次数: 0
摘要
突发或多帧图像超分辨率(MFSR)已成为计算机视觉的一个关键领域,旨在从低分辨率突发中重建高分辨率图像。与已被广泛研究的单图像超分辨率(SISR)不同,MFSR利用来自多移帧的信息来减轻SISR的病态性质。手持设备功能的快速发展,包括增强的处理能力和更快的图像捕获速率,也为这一领域增添了一层相关性。在我们之前的工作中,我们提出了一种简单而有效的深度学习方法,专门针对RAW图像,称为简单基帧Burst (simple Base Frame Burst, sbburst)。该方法基于残差卷积架构,通过结合基本帧引导机制(如跳过帧连接和基本帧与网络的连接),显示出显著的性能改进。尽管获得了有希望的结果,但与SISR相比,鉴于概述的背景和有限的调查,很明显,需要进一步的扩展和实验来推动MFSR领域向前发展。在本文中,我们通过从多个角度对该方法进行综合分析,扩展了我们最近在SBFBurst方面的工作。我们的主要贡献在于调整和测试架构来处理RAW拜耳图案图像和RGB图像,允许使用新的RealBSR-RGB数据集进行评估。我们的实验表明,即使在引入FBANet进行比较之后,sbburst仍然在数量和质量上始终优于现有的最先进的方法。我们还扩展了我们的实验,以评估架构参数、模型泛化及其利用补充信息的能力的影响。这些探索性的扩展可能为这一领域的发展开辟新的途径。我们的代码和模型可以在https://github.com/AndersonCotrim/SBFBurst上公开获得。
Enhanced residual network for burst image super-resolution using simple base frame guidance
Burst or multi-frame image super-resolution (MFSR) has emerged as a critical area in computer vision, aimed at reconstructing high-resolution images from low-resolution bursts. Unlike single-image super-resolution (SISR), which has been extensively studied, MFSR leverages information from multiple shifted frames in order to mitigate the ill-posed nature of SISR. The rapid advancement in the capabilities of handheld devices, including enhanced processing power and faster image capture rates also add a layer of relevance in this field. In our previous work, we proposed a simple yet effective deep learning method tailored for RAW images, called Simple Base Frame Burst (SBFBurst). This method, based on residual convolutional architecture, demonstrated significant performance improvements by incorporating base frame guidance mechanisms such as skip frame connections and concatenation of the base frame alongside the network. Despite the promising outcomes obtained, given the outlined context and the limited investigation compared to SISR, it is evident that further extensions and experiments are required to propel the field of MFSR forward. In this paper, we extend our recent work on SBFBurst by conducting a comprehensive analysis of the method from various perspectives. Our primary contribution lies in adapting and testing the architecture to handle both RAW Bayer pattern images and RGB images, allowing the evaluation using the novel RealBSR-RGB dataset. Our experiments revealed that SBFBurst still consistently outperforms existing state-of-the-art approaches both quantitatively and qualitatively, even after the introduction of a new method, FBANet, for comparison. We also extended our experiments to assess the impact of architecture parameters, model generalization, and its capacity to leverage complementary information. These exploratory extensions may open new avenues for advance in this field. Our code and models are publicly available at https://github.com/AndersonCotrim/SBFBurst.
期刊介绍:
Image and Vision Computing has as a primary aim the provision of an effective medium of interchange for the results of high quality theoretical and applied research fundamental to all aspects of image interpretation and computer vision. The journal publishes work that proposes new image interpretation and computer vision methodology or addresses the application of such methods to real world scenes. It seeks to strengthen a deeper understanding in the discipline by encouraging the quantitative comparison and performance evaluation of the proposed methodology. The coverage includes: image interpretation, scene modelling, object recognition and tracking, shape analysis, monitoring and surveillance, active vision and robotic systems, SLAM, biologically-inspired computer vision, motion analysis, stereo vision, document image understanding, character and handwritten text recognition, face and gesture recognition, biometrics, vision-based human-computer interaction, human activity and behavior understanding, data fusion from multiple sensor inputs, image databases.