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An efficient multi-RVM classification-based ultrasound lung image retrieval approach

机译:基于多RVM分类的超声肺图像检索方法

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This paper proposes an efficient Multi-Relevance Vector Machine (multi-RVM) classification-based ultrasound image retrieval approach for retrieval of lung images relevant to the query image. In our proposed work, a hybrid median filter is used for filtering the training and testing ultrasound lung image. Extraction of feature in the lung image is performed by using the Tamura features and convoluted grey-level co-occurrence matrix approach. The particle swarm optimisation combined differential evolution feature selection approach performs selection of minimum set of features relevant to the query image. Multi-RVM-based classification technique is used to identify the types of lung diseases. Finally, the Hamming-distance-based retrieval technique performs retrieval of similar and relevant lung images from the database. From the performance analysis result, it is clearly evident that the proposed approach achieves better performance in terms of accuracy, sensitivity and specificity, when compared to the existing classification techniques.
机译:本文提出了一种基于多相关矢量机(多RVM)分类的超声图像检索方法,用于检索与查询图像相关的肺图像。在我们提出的工作中,混合中值滤波器用于过滤培训和测试超声肺图像。通过使用Tamura特征和复杂的灰度级共发生矩阵方法来执行肺图像中的特征的提取。粒子群优化组合差分演进特征选择方法执行与查询图像相关的最小特征集的选择。基于多RVM的分类技术用于识别肺病的类型。最后,汉明距离的检索技术从数据库中执行类似和相关肺图像的检索。从性能分析结果,显然明显,与现有的分类技术相比,所提出的方法在准确性,敏感度和特异性方面实现了更好的性能。

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