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首页> 外文期刊>International journal of imaging systems and technology >A dynamic threshold-based local mesh ternary pattern technique for biomedical image retrieval
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A dynamic threshold-based local mesh ternary pattern technique for biomedical image retrieval

机译:基于动态阈值的局部网格三元模式技术在生物医学图像检索中的应用

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摘要

Many content-based image retrieval techniques like local binary pattern (LBP), local ternary pattern (LTP), local mesh peak valley edge pattern (LMePVEP), local mesh ternary pattern (LMeTerP), etc. extract texture features of an image for retrieval purposes. These techniques use fixed threshold to encode the input image and selection of such threshold value is not guided, that is, a chosen threshold may not be optimal for all images in the database. Moreover the performance of these texture-based static threshold algorithms also decreases if the input images are noisy. In this paper, a dynamic threshold value-based local mesh ternary pattern method is proposed in which the threshold value is chosen from the neighborhood of a central pixel using median of all pixels. The proposed modification reduces the overall effect of noise component and thereby improves the average retrieval rate (ARR) and average retrieval precision (ARP) of the original technique. The proposed modified technique has been compared with five other image retrieval approaches to prove its worthiness - the original local mesh ternary pattern technique (LMeTerP), a local ternary pattern technique (LTP), a Best ensemble technique, a multi-label classification CNN model and a CNN-based model of the proposed approach using a VIA ELCAP lung database and an Emphysema database. An improvement of 3.92% in ARR and 2.53% in ARP is observed over the basic local mesh ternary pattern method. Further the proposed modification has been combined with CNN concept and its results have also been analyzed.
机译:许多基于内容的图像检索技术(例如本地二进制模式(LBP),本地三元模式(LTP),本地网格峰谷边缘模式(LMePVEP),本地网格三元模式(LMeTerP)等)提取图像的纹理特征以进行检索目的。这些技术使用固定的阈值对输入图像进行编码,并且没有指导这种阈值的选择,也就是说,所选阈值可能不是数据库中所有图像的最佳选择。此外,如果输入图像有噪点,这些基于纹理的静态阈值算法的性能也会降低。在本文中,提出了一种基于动态阈值的局部网格三元模式方法,其中使用所有像素的中值从中心像素的邻域中选择阈值。所提出的修改降低了噪声分量的总体影响,从而提高了原始技术的平均检索率(ARR)和平均检索精度(ARP)。所提出的改进技术已与其他五种图像检索方法进行了比较,以证明其价值-原始局部网格三元模式技术(LMeTerP),局部三元模式技术(LTP),最佳集成技术,多标签分类CNN模型以及使用VIA ELCAP肺部数据库和肺气肿数据库的拟议方法的基于CNN的模型。与基本的局部网格三元模式方法相比,ARR的提高了3.92%,ARP的提高了2.53%。此外,所提出的修改已与CNN概念相结合,并对其结果进行了分析。

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