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Volumetric local directional triplet patterns for biomedical image retrieval

机译:用于生物医学图像检索的体积局部定向三联模式

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Image retrieval became an active and fast advancing research area since the last two decades. Volumetric Local Directional Triplet Pattern (VLDTP) for biomedical image retrieval is presented in the proposed approach. The existing spatial field technique encodes the spatial relationship in 2D plane by taking gray value difference between center pixels and surrounding neighbors. Whereas proposed approach, encodes the relationship between center pixel and its neighborhood pixel in 3D plane with four individual directions (0°, 45°, 90° and 135°). 3D volume is obtained using multi-resolution Gaussian filter bank from 2D image with different standard deviation. To observe the effectiveness of proposed algorithm, experimentation is carried out on three state of art biomedical database which are OASIS-MRI (MRI images), MESSIDOR (Retinal images) and NEMA-CT (CT images) databases. The retrieval accuracy of proposed algorithm is measured by using minimum distance measure and two-layer feed-forward neural network (ANN). The achieved retrieval accuracy of proposed system in terms of Average Retrieval Precision (ARP) is 59.85%, 55.76% 95.21% using minimum distance measure and 92.46%, 62.45%, 99.32% using ANN in respectively. From experimental result, it is demonstrated that proposed algorithm provide us significant progress in ARP than existing feature descriptor.
机译:自过去二十年以来,图像检索成为一个积极和快速的研究领域。以所提出的方法提出了用于生物医学图像检索的体积局部定向三联模式(VLDTP)。通过在中心像素和周围邻居之间的灰度值差异,现有的空间现场技术通过灰色值差异来编码2D平面中的空间关系。虽然所提出的方法,在具有四个单独的方向(0°,45°,90°和135°之间的3D平面中,对中心像素和其邻域像素之间的关系进行编码。使用具有不同标准偏差的2D图像的多分辨率高斯滤波器库获得3D音量。为了观察所提出的算法的有效性,实验是在三个艺术生物医学数据库的状态下进行的,它们是OASIS-MRI(MRI图像),Messidor(视网膜图像)和NEMA-CT(CT图像)数据库。通过使用最小距离测量和双层前馈神经网络(ANN)测量所提出算法的检索精度。在平均检索精度(ARP)方面所取得的检索精度为59.85 %,55.76 %95.21 %,使用最小距离测量和92.46 %,分别使用ANN的92.46 %,99.32 %。从实验结果中,证明所提出的算法在ARP中提供了比现有特征描述符在ARP中的显着进展。

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