基于增强特征空间表示的图像视觉复杂性挖掘

Abdullah M. Iliyasu, A. Al-Asmari, M. Abdelwahab, Ahmed S. Salama, Mohamed A. Al-Qodah, Asif R. Khan, P. Le, Fei Yan
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引用次数: 4

摘要

提出了一种增强的特征空间来表示图像的视觉复杂性,就像HVS一样。具体来说,图像中相干和非相干像素之间的比率被用作图像视觉复杂性的色度贡献的度量。同样,对比度、能量、熵和均匀性被建模为图像视觉复杂性的纹理属性。整合到SND特征空间中,这些新的(色彩和纹理)特征有助于更好地增强视觉复杂性的表现。使用Corel 1000A数据集验证建议的准确性,增强的视觉复杂性空间,即SND+空间,提高了更好地表示视觉复杂性的能力,与原始SND空间相比,同一数据集的主观(人类)评估的精确相关性提高了16.7%。进一步研究,视觉复杂性的有效表示将对图像处理和计算机视觉的许多领域产生深远的影响。
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Mining visual complexity of images based on an enhanced feature space representation
An enhanced feature space to represent visual complexity of images, as would the HVS, is presented. Specifically, the ratio between the coherent and incoherent pixels in an image was used as a measure of the chromatic contributions to the visual complexity of an image. Similarly, the contrast, energy, entropy and homogeneity were modelled as the textural attributes of an image's visual complexity. Integrated into the SND feature space, these new (chromatic and textural) features facilitate a better and enhanced representation of visual complexity. Using the Corel 1000A dataset to validate the veracity of the proposal, the enhanced visual complexity space, the SND+ space, improves the capability to better represent visual complexity by a 16.7% increase in the exact correlation with a subjective (human) evaluation of the same dataset over the original SND space. Pursued further, the effective representation of visual complexity would have profound impacts in many areas of image processing and computer vision.
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