Vishruth B. Gowda, M. T. Gopalakrishna, J. Megha, Shilpa Mohankumar
{"title":"Background initialization in video data using singular value decomposition and robust principal component analysis","authors":"Vishruth B. Gowda, M. T. Gopalakrishna, J. Megha, Shilpa Mohankumar","doi":"10.1080/1206212x.2023.2258329","DOIUrl":null,"url":null,"abstract":"AbstractBackground initialization is used in video processing applications to extract a scene without the foreground scene. In recent times, the issue of background initialization has gained researchers’ attention in different fields such as video surveillance, video segmentation, computational photography, and so on. The initialization of the background is affected due to different complex dissimilarities such as shadow, intermittent movement, illumination, camera jitter, and clutter. To overcome the aforementioned issues, this paper proposes a decomposition using the combination of the Singular Value Decomposition (SVD) and Robust Principal Component Analysis (RPCA) for Singular Spectrum Analysis (SSA) to perform an effective background initialization. The incorporation of RPCA in SVD is used to overcome the issues related to non-Gaussian noise and it also uses an effective structural knowledge of the video input i.e. sparse and low rank matrix which improves the Peak-Signal-to-Noise-Ratio (PSNR) of the background image. The SBI dataset was used to analyze the performances of SSA-SVDRPCA. The SSA-SVDRPCA is analyzed using MultiScale Structural Similarity Index (MSSSIM), Average gray-level error (AGE), Percentage of clustered error pixels (pCEPS), Percentage of error pixels (pEPs), and PSNR. The existing approaches such as Background Initialization Singular Spectrum Analysis (BISSA) and Quaternion-based Dynamic Mode Decomposition (Q-DMD) are used to compare with the SSA-SVDRPCA method. The PSNR of the SSA-SVDRPCA for Board class is 30.39 dB which is higher than the BISSA and Q-DMD.KEYWORDS: Background initializationdecompositionpeak-signal-to-noise-ratiorobust principal component analysissingular spectrum analysissingular value decomposition Disclosure statementNo potential conflict of interest was reported by the author(s).Data availability statementThe datasets generated during and/or analyzed during the current study are available in the Scene Background Initialization (SBI) dataset.SBI datasethttps://sbmi2015.na.icar.cnr.it/SBIdataset.htmlAdditional informationNotes on contributorsVishruth B. GowdaVishruth B. Gowda completed his BE in AIEMS, bangalore, karnataka and Mtech from EWIT. He currently works as an assistant professor in Department of ISE,SJB Institute of technology. He is also pursuing his research in VTU, Belagavi, Karnataka under the supervision of Dr. M T Gopalakrishna. His research area falls under the domain of comuter vision and image processing.M. T. GopalakrishnaM. T. Gopalakrishna received B. E degree (Computer Science & Engineering) from M. S Ramaiah Institute of Technology, India, M. Tech degree from Visvesvaraya Technological University, Karnataka, India and PhD from Visvesvaraya Technological University, Karnataka, India. He has more than 22 years of teaching experience. He is currently Professor & Head, Department of Artificial Intelligence and Machine Learning in SJB Institute of Technology, Bangalore, India. He has published more than 63 papers in various International journals, International conferences and National conferences. His current research is Pattern Recognition, Digital Image Processing & Computer Vision.J. MeghaJ. Megha working as assistant professor in department of ARTIFICAL INTELLIGENCE and MACHINE LEARNING, MSRIT. research focuses on pattern recognition and image processing.Shilpa MohankumarShilpa Mohankumar works as an assistant professor in Department of ISE,BIT. Her research interest includes image processing, computer vision and pattern recognition.","PeriodicalId":39673,"journal":{"name":"International Journal of Computers and Applications","volume":"4 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-09-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"International Journal of Computers and Applications","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1080/1206212x.2023.2258329","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"Computer Science","Score":null,"Total":0}
引用次数: 0
Abstract
AbstractBackground initialization is used in video processing applications to extract a scene without the foreground scene. In recent times, the issue of background initialization has gained researchers’ attention in different fields such as video surveillance, video segmentation, computational photography, and so on. The initialization of the background is affected due to different complex dissimilarities such as shadow, intermittent movement, illumination, camera jitter, and clutter. To overcome the aforementioned issues, this paper proposes a decomposition using the combination of the Singular Value Decomposition (SVD) and Robust Principal Component Analysis (RPCA) for Singular Spectrum Analysis (SSA) to perform an effective background initialization. The incorporation of RPCA in SVD is used to overcome the issues related to non-Gaussian noise and it also uses an effective structural knowledge of the video input i.e. sparse and low rank matrix which improves the Peak-Signal-to-Noise-Ratio (PSNR) of the background image. The SBI dataset was used to analyze the performances of SSA-SVDRPCA. The SSA-SVDRPCA is analyzed using MultiScale Structural Similarity Index (MSSSIM), Average gray-level error (AGE), Percentage of clustered error pixels (pCEPS), Percentage of error pixels (pEPs), and PSNR. The existing approaches such as Background Initialization Singular Spectrum Analysis (BISSA) and Quaternion-based Dynamic Mode Decomposition (Q-DMD) are used to compare with the SSA-SVDRPCA method. The PSNR of the SSA-SVDRPCA for Board class is 30.39 dB which is higher than the BISSA and Q-DMD.KEYWORDS: Background initializationdecompositionpeak-signal-to-noise-ratiorobust principal component analysissingular spectrum analysissingular value decomposition Disclosure statementNo potential conflict of interest was reported by the author(s).Data availability statementThe datasets generated during and/or analyzed during the current study are available in the Scene Background Initialization (SBI) dataset.SBI datasethttps://sbmi2015.na.icar.cnr.it/SBIdataset.htmlAdditional informationNotes on contributorsVishruth B. GowdaVishruth B. Gowda completed his BE in AIEMS, bangalore, karnataka and Mtech from EWIT. He currently works as an assistant professor in Department of ISE,SJB Institute of technology. He is also pursuing his research in VTU, Belagavi, Karnataka under the supervision of Dr. M T Gopalakrishna. His research area falls under the domain of comuter vision and image processing.M. T. GopalakrishnaM. T. Gopalakrishna received B. E degree (Computer Science & Engineering) from M. S Ramaiah Institute of Technology, India, M. Tech degree from Visvesvaraya Technological University, Karnataka, India and PhD from Visvesvaraya Technological University, Karnataka, India. He has more than 22 years of teaching experience. He is currently Professor & Head, Department of Artificial Intelligence and Machine Learning in SJB Institute of Technology, Bangalore, India. He has published more than 63 papers in various International journals, International conferences and National conferences. His current research is Pattern Recognition, Digital Image Processing & Computer Vision.J. MeghaJ. Megha working as assistant professor in department of ARTIFICAL INTELLIGENCE and MACHINE LEARNING, MSRIT. research focuses on pattern recognition and image processing.Shilpa MohankumarShilpa Mohankumar works as an assistant professor in Department of ISE,BIT. Her research interest includes image processing, computer vision and pattern recognition.
摘要背景初始化在视频处理应用中用于提取没有前景的场景。近年来,背景初始化问题在视频监控、视频分割、计算摄影等不同领域受到了研究人员的关注。背景的初始化受到各种复杂差异的影响,如阴影、间歇运动、照明、相机抖动和杂波。为了克服上述问题,本文提出了一种结合奇异值分解(SVD)和鲁棒主成分分析(RPCA)进行奇异谱分析(SSA)的分解方法来进行有效的背景初始化。将RPCA结合到SVD中用于克服与非高斯噪声相关的问题,并且它还使用了视频输入的有效结构知识,即稀疏和低秩矩阵,从而提高了背景图像的峰值信噪比(PSNR)。使用SBI数据集分析SSA-SVDRPCA的性能。采用多尺度结构相似指数(MSSSIM)、平均灰度误差(AGE)、聚类误差像素百分比(pCEPS)、误差像素百分比(pEPs)和PSNR对SSA-SVDRPCA进行分析。利用背景初始化奇异谱分析(BISSA)和基于四元数的动态模态分解(Q-DMD)等现有方法与SSA-SVDRPCA方法进行比较。SSA-SVDRPCA的PSNR为30.39 dB,高于bisa和Q-DMD。关键词:背景初始化、分解、峰值信噪比、抗噪主成分分析、奇异谱分析、奇异值分解披露声明作者未报告潜在利益冲突。数据可用性声明在当前研究期间生成和/或分析的数据集在场景背景初始化(SBI)数据集中可用。作者简介:davishruth B. Gowda完成了他在AIEMS、班加罗尔、卡纳塔克邦和Mtech的论文。现为上海工学院电子工程系助理教授。他还在M T Gopalakrishna博士的指导下,在卡纳塔克邦Belagavi的VTU进行研究。他的研究领域属于计算机视觉和图像处理领域。t . GopalakrishnaM。T. Gopalakrishna获得印度Ramaiah理工学院计算机科学与工程学士学位,印度卡纳塔克邦Visvesvaraya理工大学技术硕士学位和印度卡纳塔克邦Visvesvaraya理工大学博士学位。他有超过22年的教学经验。他目前是印度班加罗尔SJB理工学院人工智能和机器学习系的教授兼系主任。在各类国际期刊、国际会议和国内会议上发表论文63余篇。主要研究方向为模式识别、数字图像处理与计算机视觉。MeghaJ。现为印度理工大学人工智能与机器学习系助理教授。研究重点是模式识别和图像处理。Shilpa Mohankumar是BIT印度理工学院的助理教授。主要研究方向为图像处理、计算机视觉和模式识别。
期刊介绍:
The International Journal of Computers and Applications (IJCA) is a unique platform for publishing novel ideas, research outcomes and fundamental advances in all aspects of Computer Science, Computer Engineering, and Computer Applications. This is a peer-reviewed international journal with a vision to provide the academic and industrial community a platform for presenting original research ideas and applications. IJCA welcomes four special types of papers in addition to the regular research papers within its scope: (a) Papers for which all results could be easily reproducible. For such papers, the authors will be asked to upload "instructions for reproduction'''', possibly with the source codes or stable URLs (from where the codes could be downloaded). (b) Papers with negative results. For such papers, the experimental setting and negative results must be presented in detail. Also, why the negative results are important for the research community must be explained clearly. The rationale behind this kind of paper is that this would help researchers choose the correct approaches to solve problems and avoid the (already worked out) failed approaches. (c) Detailed report, case study and literature review articles about innovative software / hardware, new technology, high impact computer applications and future development with sufficient background and subject coverage. (d) Special issue papers focussing on a particular theme with significant importance or papers selected from a relevant conference with sufficient improvement and new material to differentiate from the papers published in a conference proceedings.