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Content-based image retrieval incorporating models of human perception

机译:基于内容的图像检索结合了人类感知模型

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We develop a system for retrieving medical images with focus objects incorporating models of human perception. The approach is to guide the search for an optimum similarity function using human perception. First, the images are segmented using an automated segmentation tool. Then, 20 shape features are computed from each image to obtain a feature matrix. Principal component analysis is performed on this matrix to reduce the number of dimensions. Principal components obtained from the analysis are used to select a subset of variables that best represents the data. A human perception of similarity experiment is designed to obtain an aggregated human response matrix. Finally, an optimum weighted Manhattan distance function is designed using a genetic algorithm utilizing the Mantel test as a fitness function. The system is tested for content-based retrieval of skin lesion images. The results show significant agreement between the computer assessment and human perception of similarity. Since the features extracted are not specific to skin lesion images, the system can be used to retrieve other types of images.
机译:我们开发一个检索医学图像的系统,其中包含人类感知模型的焦点对象。该方法是指使用人类感知来指导寻求最佳相似性功能。首先,使用自动分割工具分段图像。然后,从每个图像计算20个形状特征以获得特征矩阵。在该矩阵上执行主成分分析以减少维度的数量。从分析中获得的主成分用于选择最能代表数据的变量子集。设计了对相似性实验的人类感知旨在获得聚集的人反应基质。最后,使用利用Mantel Test作为健身功能的遗传算法设计了最佳加权曼哈顿距离功能。测试系统基于内容的皮肤病变图像检索。结果表明计算机评估与人类相似性的看法之间的重大协议。由于提取的特征不特异于皮肤病变图像,因此该系统可用于检索其他类型的图像。

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