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A Volume Image Foreground Identification Method by Dual Multi-Scale Morphological Operations

机译:双重多尺度形态运算的卷图像前景识别方法

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A simple and regular foreground identification (FGID) method is proposed for image indexing. The gray-level Morphological open/close by reconstruction (MOR/MCR) is operated on one image in a dual and multi-scale approach to construct a background gray-level mesh to distinguish foregrounds (FGs). The highly regular MOR/MCR operations make it feasible to deal with FG segmentation of volume images. The FGID efficiency is verified by the image retrieval performance, i.e., recall, precision and rank. With precisely identified FGs, MPEG-7 shape descriptors, in additional to color ones, can be used to improve the image retrieval performance. For the retrieval unit, a greedy boosting retrieval method is used to perform shape-based multi-instance query in considering the feature element dependency. To perform multi-instance query with multiple features, the retrieval unit integrates the similarity ranks of different feature types according to the feature saliency among query samples to yield the final similarity rank. The normalized correlation coefficient of features among query samples is computed to provide weighting factors for integrating ranks. Experiments show that the FGID unit helps much in improving the retrieval performances, i.e., 7% improvement for the precision-recall (PR) and 20% improvement for the averaged normalized modified retrieval rank (ANMRR), as compared to non-FGID ones.
机译:提出了一种简单和常规的前景识别(FGID)方法用于图像索引。通过重建(MOR / MCR)的灰度形态开/关闭以双重和多尺度方法在一个图像上运行,以构建背景灰度型网格以区分前景(FGS)。高度常规的Mor / MCR操作使得处理卷图像的FG分段是可行的。通过图像检索性能,即回忆,精度和等级来验证FGID效率。通过精确地识别FGS,MPEG-7形状描述符在附加到彩色块中,可用于改善图像检索性能。对于检索单元,贪婪升压检索方法用于考虑特征元素依赖性时执行基于形状的多实例查询。要执行多种特征的多实例查询,检索单元根据查询样本之间的特征显着性集成了不同特征类型的相似性等级,以产生最终相似性等级。查询样本之间的归一化相关性系数被计算为提供用于集成秩的加权因子。实验表明,与非FGID载体相比,FGID单元有助于改善检索性能,即,对预测召回(PR)的改进和平均归一化修正检索检索等级(ANMRR)的20%改善。

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