<p>Visual impairment has various forms all of which negatively affect the patient’s daily activities and prevent performing simple actions like walking safely in a street. Content-aware image retargeting can be used to enhance the scene for patients who have limited visual field i.e. tunnel vision. A modified Seam Carving method is presented in this research paper which can decrease the width of the input image to fit in the patient’s angle of vision while preserving the important objects in the original image as well as the image details. The method enhanced the original Seam Carving by calculating the energy map using multiscale image fusion that combines depth, saliency, foreground segmentation, and edge detection features, and used a forward-middle approach for the seam removal step. The results showed efficiency that outperformed various retargeting methods, achieving a 30.8% improvement in the composite score that integrates structural, perceptual, and feature-based quality metrics. Statistical analysis using paired t-tests (<InlineEquation ID="IEq1"> <EquationSource Format="TEX">\(n = 73\)</EquationSource> </InlineEquation>) confirmed statistically significant improvements across all major metrics (<InlineEquation ID="IEq2"> <EquationSource Format="TEX">\(p&lt;0.001\)</EquationSource> </InlineEquation>), including SSIM, SIFT feature matching, and modern deep learning-based perceptual quality metrics, compared to the baseline seam carving method.</p>

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An improved seam carving method for enhancing the visual field of tunnel vision patients

  • Dina El-Torky,
  • Salsabil El-Regaily,
  • Ahmad Moadamani,
  • Ahmed Osama,
  • Alaa Mostafa,
  • Amira Yasser,
  • Mosaab Ghaley,
  • Shahd Ashraf,
  • Maryam Al-Berry,
  • Zaki Fayed

摘要

Visual impairment has various forms all of which negatively affect the patient’s daily activities and prevent performing simple actions like walking safely in a street. Content-aware image retargeting can be used to enhance the scene for patients who have limited visual field i.e. tunnel vision. A modified Seam Carving method is presented in this research paper which can decrease the width of the input image to fit in the patient’s angle of vision while preserving the important objects in the original image as well as the image details. The method enhanced the original Seam Carving by calculating the energy map using multiscale image fusion that combines depth, saliency, foreground segmentation, and edge detection features, and used a forward-middle approach for the seam removal step. The results showed efficiency that outperformed various retargeting methods, achieving a 30.8% improvement in the composite score that integrates structural, perceptual, and feature-based quality metrics. Statistical analysis using paired t-tests ( \(n = 73\) ) confirmed statistically significant improvements across all major metrics ( \(p<0.001\) ), including SSIM, SIFT feature matching, and modern deep learning-based perceptual quality metrics, compared to the baseline seam carving method.