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Research on image screening model of ancient villages

机译:古村落的图像筛选模型研究

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摘要

Ancient villages are the carrier of a nation's profound history and culture. They are the integration of history, culture, architecture and sculpture, and have many value attributes. With the development of society, the protection of ancient villages is very important. The establishment of digital archives is an important means to protect ancient villages. Because of the large number and wide distribution of ancient villages, crowd sourcing can quickly and widely access the digital resources of ancient villages. Because of the uneven quality and repetition of the images collected from ancient villages, it is necessary to screen the images of ancient villages. Therefore, this paper proposes a screening model of ancient villages based on SIFT and convolution neural network. Firstly, this paper chooses edge gray change rate and NIQE quality score to evaluate the quality of ancient village image; secondly, extracts SIFT features of image for matching, calculates matching similarity to determine whether the matched image is myopic repetition. Finally, the image is filtered or preserved by using convolution neural network with the edge gray change rate, NIQE quality score and some image attributes as features. Experiments show that the ancient village image screening model designed in this paper has higher accuracy and recall rate than other methods, and has better screening effect. (C) 2019 Published by Elsevier Inc.
机译:古老的村庄是一个国家深厚的历史和文化的载体。它们是历史,文化,建筑和雕塑的融合,具有许多价值属性。随着社会的发展,保护古村落非常重要。建立数字档案馆是保护古老村庄的重要手段。由于古村落的数量众多且分布广泛,因此众包可以快速,广泛地访问古村落的数字资源。由于从古村落中收集到的图像质量不佳且重复性很强,因此有必要对古村落的图像进行筛选。因此,本文提出了一种基于SIFT和卷积神经网络的古村落筛选模型。首先,选择边缘灰度变化率和NIQE质量得分,评价古村落图像的质量。其次,提取图像的SIFT特征进行匹配,计算匹配相似度,确定匹配后的图像是否为近视重复。最后,利用卷积神经网络以边缘灰度变化率,NIQE质量得分和一些图像属性为特征对图像进行过滤或保存。实验表明,本文设计的古村落图像筛选模型比其他方法具有更高的准确性和召回率,并且具有更好的筛选效果。 (C)2019由Elsevier Inc.发布

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