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首页> 外文期刊>Chinese Journal of Electronics >Incorporating Spatial Distribution Feature with Local Patterns for Content-Based Image Retrieval
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Incorporating Spatial Distribution Feature with Local Patterns for Content-Based Image Retrieval

机译:将空间分布特征与局部模式相结合以进行基于内容的图像检索

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摘要

Local patterns record the gray-level differences between a referenced pixel in an image and its surrounding pixels, which have been commonly used to describe the image features. However, traditional local patterns ignore the spatial distribution feature of texture information in images. We group the gray-level variations along three directions, i.e., horizontal, vertical, and diagonal directions. Each group is then merged into a Local spatial distribution pattern (LSDP) to represent the spatial distribution image feature. We also construct the LSDP patterns for gradient and filtered images, and finally form the Complete local spatial distribution pattern (CLSDP) descriptor to completely describe the texture image feature. Experiments on textural and natural image sets were conducted to compare our CLSDP-based image retrieval algorithm with four previous competitors. The results show that our method is superior to existing algorithms considering both average precision and recall.
机译:局部图案记录了图像中参考像素与其周围像素之间的灰度级差异,这些差异通常用于描述图像特征。然而,传统的局部图案忽略了图像中纹理信息的空间分布特征。我们沿三个方向(即水平,垂直和对角线方向)对灰度变化进行分组。然后将每个组合并为局部空间分布图案(LSDP),以表示空间分布图像特征。我们还为梯度图像和滤波后的图像构造了LSDP模式,最后形成了完整的局部空间分布模式(CLSDP)描述符来完整描述纹理图像特征。进行了纹理和自然图像集的实验,以将我们基于CLSDP的图像检索算法与之前的四个竞争对手进行比较。结果表明,从平均精度和查全率两方面考虑,我们的方法优于现有算法。

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