摘要
提出了一种将图像本身的低级特征和语义特征描述相结合的医学图像检索方法。首先提取图像的灰度特征、矩特征和纹理特征 ,进一步采用遗传算法进行最优特征的选择 ,由于这些低层特征对图像的描述与人类对图像的描述存在较大差异 ,直接利用这些特征作为检索依据常得不到满意的结果 ,因此需要进一步提取语义特征 ,将影像报告中医生给出的关于图像的描述作为语义内容进行相似性检索。实验结果表明 。
In this paper, a new medical image retrieval approach based on low level features and semantic features is proposed. The low level features include gray, moment and texture features, which are selected by genetic algorithm. These features can't express the human's understanding of the images. Directly using these features can't get satisfying results, so the semantic features are needed. The image describing in the image report by doctors are chosen for semantic content. Experiment results show that the retrieval result by low features and semantic features are better than only by low features.
出处
《中国图象图形学报(A辑)》
CSCD
北大核心
2004年第2期220-224,共5页
Journal of Image and Graphics