壁画全景图像质量的统计模型

Q3 Engineering
Ajith Premakumara Wickramasinghe, A. Jayasiri
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引用次数: 0

摘要

全景图像的创建是数字成像领域的关键。它是将一幅大图像的重叠图像分量系列组合而成的,这种图像由于视场大,使用普通相机很难聚焦。测量全景图像的质量是一项具有挑战性的任务。因此,本研究的目的是寻找全景图像视觉质量的属性,并为壁画全景图像质量的统计模型提出预测变量。作者提出了一种新的方法来创建壁画的全景图像。本文对数字图像的质量属性进行了研究。据此,确定了色彩平衡、噪声和失真是影响全景图像整体质量的两个最关键的因素。作者走访了三座寺庙,用简单的方法拍摄了大型壁画的数字图像。然后,使用三种方法进行全景图像的创建:新方法与另外两种方法,Photoshop(市面上有)和Hugin(开源软件)。通过视觉艺术领域的专家进行主观评价。参与者被要求使用李克特四分制评价色彩平衡的质量,噪音和失真作为预测变量,整体质量作为全景图像的响应变量。通过Minitab统计软件包进行有序逻辑回归拟合,结果表明色彩平衡、噪声和失真是影响全景图像质量的两个重要属性。此外,所收集的数据与模型的拟合精度较高。ICIET 2021论文全文提交
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical Model for the Quality of Panoramic Images of Mural Paintings
Panoramic image creation is crucial in area of digital imaging. It is developed by combining an overlapped image component series of a large image, which is difficult to be focused on using a normal camera due to a large field of view. Measuring the quality of panoramic images is a challenging task. Therefore, the objectives of this research are to find the attributes of visual quality of panoramic images and to propose predictor variables for a statistical model for the quality of panoramic images of mural paintings. Authors have used a proposed novel method for creating panoramic images of mural painting. In this study, authors researched on the quality attributes of digital images. Accordingly, color balance, noise and distortion were identified as the two most critical factors which affect the overall quality of the panoramic images. Authors visited three temples and captured digital images of mural paintings of large scale using a simple method. Then, panoramic images were created using three methods: the novel method with other two methods, Photoshop (available in the market) and Hugin (open source software). Subjective evaluation was applied through experts in the field of Visual Arts. Participants were asked to rate the quality using four-point Likert scale for color balance, noise and distortion as predictor variables and overall quality as the response variable of panoramic images. Ordinal logistic regression was fitted through Minitab statistical package and the results showed that color balance and noise and distortion are two important attributes for the quality of the panoramic images. Moreover, the collected data fit the model at a higher accuracy. Full paper submission of ICIET 2021
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来源期刊
Advances in Technology Innovation
Advances in Technology Innovation Energy-Energy Engineering and Power Technology
CiteScore
1.90
自引率
0.00%
发文量
18
审稿时长
12 weeks
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