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Content-based medical image retrieval using a novel hybrid scattering coefficients - bag of visual words -DWT relevance fusion

机译:基于内容的医学图像检索使用新型混合散射系数 - 袋视觉单词-dwt相关性融合

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摘要

Image content analysis plays a major role in image classification, retrieval, and indexing together with object and scene recognition. Numerous image content descriptors are proposed in the literature, but their high computational costs and lower-performance scores make them inappropriate for content-based medical image retrieval (CBMIR) for large medical image datasets. To overcome these drawbacks, a novel hybrid Scattering Coefficients - Bag of Visual Words - Discrete Wavelet Transform (SC-BoVW- DWT) relevance fusion algorithm is proposed for effective CBMIR. For preprocessing, resizing and contrast limited adaptive histogram equalization (CLAHE) are carried out. Then scattering transform (ST), BoVW and DWT are applied to extract texture features, visual features, and low-level features of the preprocessed images respectively. A hybrid Grey Wolf Optimization - Particle Swarm Optimization (GWO-PSO) approach is used for optimal feature selection. Finally, image fusion (IF) is carried out with a relevance fusion based Euclidean distance technique. Experiments based on three standard medical computer tomography image databases namely, EXACT-09, TCIA-CT and NEMA-CT, are carried out. The proposed hybrid method outperforms the existing techniques in terms of precision, F-score, and recall values. Improvement in the average rate of precision (ARP), average rate of recall (ARR) and F-score values of 6.02%, 2.82% and 3.57% respectively, for the EXACT-09 dataset and 3.55%, 1.84%, and 2.12% respectively for the TCIA-CT dataset are observed compared with the existing Scattering Transform- canonical correlation analysis vertical projection (ST-CCA(v)). For NEMA-CT an improvement of 0.21% (ARP) is obtained compared with the existing Histogram of compressed scattering coefficients (HCSC).
机译:图像内容分析在图像分类,检索和索引以及对象和场景识别中扮演主要作用。在文献中提出了许多图像内容描述符,但它们的高计算成本和低性能分数使得它们不适合大型医学图像数据集的基于内容的医学图像检索(CBMIR)。为了克服这些缺点,提出了一种新的混合散射系数 - 袋视觉单词 - 离散小波变换(SC-BOVW-DWT)相关性融合算法,用于有效CBMIR。为了预处理,进行调整大小和对比度有限的自适应直方图均衡(CLAHE)。然后,应用散射变换(ST),BOVW和DWT分别提取预处理图像的纹理特征,视觉功能和低级功能。混合灰狼优化 - 粒子群优化(GWO-PSO)方法用于最佳特征选择。最后,通过基于相关的融合的欧几里德距离技术来执行图像融合(IF)。基于三个标准医疗计算机断层扫描图像数据库的实验即,进行了精确的09,TCIA-CT和NEMA-CT。所提出的混合方法在精度,F分数和召回值方面优于现有技术。改善平均精度(ARP),召回(ARR)的平均速率分别为0.702%,2.82%和3.57%,对于精确的09数据集和3.55%,1.84%和2.12%与现有的散射变换 - 规范相关分析垂直投影相比,分别观察到TCIA-CT数据集(ST-CCA(V))。对于NEMA-CT,与压缩散射系数(HCSC)的现有直方图相比,获得了0.21%(ARP)的改善。

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