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Analysis of Ultrasound Images of Superficial Organs Based on the Combination of Global Features and Local Features

机译:基于全局特征和局部特征的组合的浅表浅层图像的超声图像分析

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摘要

Ultrasound imaging has become the preferred method for early detection of superficial organ lesions due to its non-invasive, economical, convenient, and radiation-free features. First, in the superficial organ ultrasound image analysis module based on local features, using Dense Sift as the local feature descriptor, the similarity sequence of the local features of the input image and the images in the sample library is calculated by the BOW algorithm and sorted in descending order of similarity. Secondly, using the wavelet transform's local feature information representation capabilities in the time and frequency domains, the wavelet transform is performed on the small and identical feature information contained in the image to remove redundant information in each feature map to obtain a salient part of the image's local features. Finally, through the analysis of elastic ultrasound images, a quantitative index that can be used to evaluate ultrasound images of superficial organs is proposed, which has higher accuracy and reliability than the current clinical methods for evaluating ultrasound images of superficial organs. By analyzing the features of superficial organ ultrasound images, it is proposed that the overall features of superficial organ ultrasound images are more conducive to distinguishing benign and malignant lesions than local features. Based on the initial localization of the lesion, the global features of the superficial organ ultrasound image were combined with the local features of the B-ultrasound image, and the method of combining global features with local features was used to classify and achieved good results.
机译:超声成像因其无创、经济、方便、无辐射等特点,已成为早期发现浅表器官病变的首选方法。首先,在基于局部特征的浅表器官超声图像分析模块中,使用稠密Sift作为局部特征描述符,通过BOW算法计算输入图像和样本库中图像的局部特征的相似性序列,并按相似性降序排序。其次,利用小波变换在时域和频域的局部特征信息表示能力,对图像中包含的小而相同的特征信息进行小波变换,去除每个特征映射中的冗余信息,以获得图像局部特征的显著部分。最后,通过对弹性超声图像的分析,提出了一种可用于评价浅表器官超声图像的定量指标,该指标比目前临床上评价浅表器官超声图像的方法具有更高的准确性和可靠性。通过对浅表器官超声图像特征的分析,提出浅表器官超声图像的整体特征比局部特征更有利于鉴别良恶性病变。基于病变的初始定位,将浅表器官超声图像的全局特征与B超图像的局部特征相结合,采用全局特征与局部特征相结合的方法进行分类,取得了良好的效果。

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