M. G. Ramarao, G. Aravind, S. Aftab, M. Gowtham, G. Charan
{"title":"Demoiring Images using Efficient Attention Fusion module in Wavelet Domain","authors":"M. G. Ramarao, G. Aravind, S. Aftab, M. Gowtham, G. Charan","doi":"10.46610/jooce.2022.v08i02.001","DOIUrl":null,"url":null,"abstract":"When we use a capturing device to capture digital displays, we obtain a vivid rainbow pattern. It's known as \"moiré\" and it has an impact on image quality and subsequent processing. There are several ways to save money. Modern approaches for eliminating moiré patterns rely on down sampling pooling layers to retrieve multiscale information, which might result in data loss. To show this issue, this research provides a wavelet-based demoiréing approach. Both Inverse Discrete Wavelet Transform (IDWT) and Discrete Wavelet Transform (DWT) are used in this. This technology may efficiently enhance the network related field without any data loss in place of standard down sampling and up sampling. Furthermore, this approach employs an effective attention fusion module to reconstruct additional details of moiré patterns (EAFM). Using an aggregate of green channel attention (ECA), spatial attention (SA), and neighborhood residual getting to know, this module can self-adaptively study several weights of function statistics at distinct degrees and encourage the community to cognizance extra on required statistics as moiré statistics to beautify the getting to know and demoiréing paintings performed via way of means of enhancing photograph excellent and offering the specified Accurate output. Extensive trials the usage of publicly to be had datasets have established that this approach can perpetually cast off moiré styles even as additionally being quantitatively and qualitatively sound.","PeriodicalId":159105,"journal":{"name":"Journal of Optical Communication Electronics","volume":"19 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2022-06-15","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Journal of Optical Communication Electronics","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.46610/jooce.2022.v08i02.001","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
When we use a capturing device to capture digital displays, we obtain a vivid rainbow pattern. It's known as "moiré" and it has an impact on image quality and subsequent processing. There are several ways to save money. Modern approaches for eliminating moiré patterns rely on down sampling pooling layers to retrieve multiscale information, which might result in data loss. To show this issue, this research provides a wavelet-based demoiréing approach. Both Inverse Discrete Wavelet Transform (IDWT) and Discrete Wavelet Transform (DWT) are used in this. This technology may efficiently enhance the network related field without any data loss in place of standard down sampling and up sampling. Furthermore, this approach employs an effective attention fusion module to reconstruct additional details of moiré patterns (EAFM). Using an aggregate of green channel attention (ECA), spatial attention (SA), and neighborhood residual getting to know, this module can self-adaptively study several weights of function statistics at distinct degrees and encourage the community to cognizance extra on required statistics as moiré statistics to beautify the getting to know and demoiréing paintings performed via way of means of enhancing photograph excellent and offering the specified Accurate output. Extensive trials the usage of publicly to be had datasets have established that this approach can perpetually cast off moiré styles even as additionally being quantitatively and qualitatively sound.
当我们使用捕获设备捕获数字显示器时,我们获得了生动的彩虹图案。它被称为“moir”,它对图像质量和后续处理有影响。省钱的方法有很多。现代的消除不规则模式的方法依赖于下采样池层来检索多尺度信息,这可能导致数据丢失。为了说明这个问题,本研究提供了一种基于小波的分解方法。离散小波逆变换(IDWT)和离散小波变换(DWT)都被用于该方法。该技术可以有效地增强网络相关领域的性能,而不丢失任何数据,取代了标准的下采样和上采样。此外,该方法采用了一个有效的注意力融合模块来重建动态模式(EAFM)的附加细节。该模块利用绿色通道关注(ECA)、空间关注(SA)和邻域残差知晓(neighborhood residual getting to know)的集合,在不同程度上自适应地学习函数统计的若干权重,并鼓励社区将额外需要的统计识别为moir统计,通过提高照片优秀性和提供指定的精确输出的方式来美化了解和分解绘画。大量使用公开数据集的试验表明,这种方法可以永远摆脱moir风格,即使在数量和质量上都是合理的。