基于多尺度局部位平面任意形状模式的生物医学图像检索

D. Mahanta, D. Hazarika, V. K. Nath
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引用次数: 0

摘要

提出了一种基于多尺度模式特征的生物医学图像检索技术。该方法在每个尺度下,除了在局部位面采用经典的圆形采样结构外,还采用任意形状的采样结构进行有效的纹理描述,并将其命名为多尺度局部位面任意形状模式(MS-LBASP)。所提出的特征描述符首先将输入图像下采样到三个不同的尺度。然后提取每个下采样图像的位平面并对其进行局部编码,表征纹理的局部空间任意和圆形结构。利用量化和基于均值的融合来减少特征。最后,使用符号和幅度信息对中心像素和融合的局部位平面变换值之间的关系进行编码,以更好地描述特征。通过实验验证了MS-LBASP的性能。实验使用两个基准计算机断层扫描(CT)图像数据集和一个磁共振成像(MRI)图像数据集。结果表明,MS-LBASP优于现有的相关图像描述符。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biomedical Image Retrieval using Muti-Scale Local Bit-plane Arbitrary Shaped Patterns
A biomedical image retrieval technique using novel multi-scale pattern based feature is proposed. The introduced technique, in each scale, employs arbitrary shaped sampling structures in addition to a classical circular sampling structure in local bit-planes for effective texture description, and named as the multi-scale local bit-plane arbitrary-shaped pattern (MS-LBASP). The proposed feature descriptor first downsamples the input image into three different scales. Then the bit planes of each downsampled image are extracted and the corresponding bit-planes are locally encoded, characterizing the local spatial arbitrary and circular shaped structures of texture. The quantization and mean based fusion is utilized to reduce the features. Finally, the relationship between the center-pixel and the fused local bit-plane transformed values are encoded using both sign and magnitude information for better feature description. The experiments were conducted to test the performance of MS-LBASP. Two benchmark computer tomography (CT) image datasets and one magnetic resonance imaging (MRI) image dataset were used in the experiments. Results demonstrate that the MS-LBASP outperforms the existing relevant state of the art image descriptors.
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