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首页> 外文期刊>Journal of Advanced Computatioanl Intelligence and Intelligent Informatics >Representing Visual Complexity of Images Using a 3D Feature Space Based on Structure, Noise, and Diversity
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Representing Visual Complexity of Images Using a 3D Feature Space Based on Structure, Noise, and Diversity

机译:使用基于结构,噪声和多样性的3D特征空间表示图像的视觉复杂性

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摘要

A 3D feature space is proposed to represent visual complexity of images based on Structure, Noise, and Diversity (SND) features that are extracted from the images. By representing images using the proposed feature space, the human classification of visual complexity of images as being simple, medium, or complex can be implied from the structure of the space. The structure of the SND space as determined by a clustering algorithm and a fuzzy inference system are then used to assign visual complexity labels and values to the images respectively. Experiments on Corel 1000A dataset, Web-crawled, and Caltech 256 object category dataset with 1000, 9907, and 30607 images respectively using MATLAB demonstrate the capability of the 3D feature space to effectively represent the visual complexity. The proposal provides a richer understanding about the visual complexity of images which has applications in evaluations to determine the capacity and feasibility of the images to tolerate image processing tasks such as watermarking and compression.
机译:提出了一种3D特征空间,用于基于从图像中提取的结构,噪声和分集(SND)特征来表示图像的视觉复杂性。通过使用建议的特征空间表示图像,可以从空间的结构中暗示人类对图像的视觉复杂性的分类是简单,中等还是复杂。然后,将由聚类算法和模糊推理系统确定的SND空间结构分别用于为图像分配视觉复杂性标签和值。使用MATLAB在分别具有1000、9907和30607图像的Corel 1000A数据集,Web爬网和Caltech 256对象类别数据集上进行的实验证明了3D特征空间有效表示视觉复杂性的能力。该提案对图像的视觉复杂性提供了更丰富的理解,可用于评估以确定图像容忍图像处理任务(如水印和压缩)的能力和可行性。

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