Selected article for: "Co occurrence and texture image"

Author: Shakya, Amit Kumar; Ramola, Ayushman; Vidyarthi, Anurag
Title: Modeling of texture quantification and image classification for change prediction due to COVID lockdown using Skysat and Planetscope imagery
  • Cord-id: adeojdx3
  • Document date: 2021_8_25
  • ID: adeojdx3
    Snippet: 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 ([Formula: see text] )” technique. Image classification-based “object-based change detection ([Formula: see text] )” 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
    Document: 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 ([Formula: see text] )” technique. Image classification-based “object-based change detection ([Formula: see text] )” 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 ([Formula: see text] ),” “Minimum distance classification ([Formula: see text] ),” “Maximum likelihood classification ([Formula: see text] ),” “Spectral angle mapper ([Formula: see text] ),” “Spectral information divergence ([Formula: see text] )” and “Support vector machine ([Formula: see text] ).” [Formula: see text] calculations have provided a pattern in texture features contrast, correlation, [Formula: see text] , and [Formula: see text] . Maximum classification accuracy of [Formula: see text] and [Formula: see text] are obtained for pre-COVID and post-COVID image data through [Formula: see text] 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.

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