Shakya Amit Kumar, Ramola Ayushman, Vidyarthi Anurag
Department of Electronics and Communication Engineering, Sant Longowal Institute of Engineering and Technology, Sangrur, Punjab India.
Department of Electronics and Communication Engineering, Graphic Era (Deemed to be University), Dehradun, Uttarakhand India.
Model Earth Syst Environ. 2022;8(2):2767-2792. doi: 10.1007/s40808-021-01258-6. Epub 2021 Aug 25.
This research work models two methods together to provide maximum information about a study area. The quantification of image texture is performed using the "grey level co-occurrence matrix ( )" technique. Image classification-based "object-based change detection ( )" methods are used to visually represent the developed transformation in the study area. Pre-COVID and post-COVID (during lockdown) panchromatic images of Connaught Place, New Delhi, are investigated in this research work to develop a model for the study area. Texture classification of the study area is performed based on visual texture features for eight distances and four orientations. Six different image classification methodologies are used for mapping the study area. These methodologies are "Parallelepiped classification ( )," "Minimum distance classification ( )," "Maximum likelihood classification ( )," "Spectral angle mapper ( )," "Spectral information divergence ( )" and "Support vector machine ( )." calculations have provided a pattern in texture features contrast, correlation, , and . Maximum classification accuracy of and are obtained for pre-COVID and post-COVID image data through classification technique. Finally, a model is presented to analyze before and after COVID images to get complete information about the study area numerically and visually.
本研究工作将两种方法结合起来建模,以提供有关研究区域的最大信息量。使用“灰度共生矩阵( )”技术进行图像纹理量化。基于图像分类的“基于对象的变化检测( )”方法用于直观呈现研究区域内发生的变化。本研究工作对新德里康诺特广场的新冠疫情前和疫情期间(封锁期间)的全色图像进行了研究,以建立该研究区域的模型。基于视觉纹理特征,对研究区域在八个距离和四个方向上进行纹理分类。使用六种不同的图像分类方法对研究区域进行映射。这些方法分别是“平行六面体分类( )”、“最小距离分类( )”、“最大似然分类( )”、“光谱角映射器( )”、“光谱信息散度( )”和“支持向量机( )”。 计算得出了纹理特征对比度、相关性、 和 的模式。通过 分类技术,新冠疫情前和疫情后图像数据的最大分类准确率分别为 和 。最后,提出了一个模型,用于分析新冠疫情前后的图像,以便从数值和视觉上获取有关研究区域的完整信息。