基于偏序结构的图像标注

Image annotation based on partial order structure

  • 摘要: 图像标注旨在为图像分配一系列的语义标签描述图像的内容。针对高级语义与低级特征之间的语义鸿沟问题,本文提出了基于偏序结构的图像标注方法。首先,计算训练图像与测试图像的相似性得分,得到测试图像的初始邻近集及邻近标签;然后通过构建的属性偏序结构,获得邻近标签的相关语义,提高标签的丰富度,以及利用构建的对象偏序结构,得到最终的候选集。为了提高标注的准确率,设置一个频率阈值筛选出频率较高的标签作为最终的关键词。通过实验证明,实验结果有效地提高了标注的准确率和召回率。

     

    Abstract: Image annotation aims at assigning a set of semantic labels to describe the content of the image. Aiming at the gap of high-level semantics and low-level features in image annotation, this paper proposed an image annotation methodology based on partial order structure in this paper. At first, calculated the visual score and obtained the adjacent labels. Through the attribute partial order structure (APOS) diagram, the method can get the related semantics of the adjacent label. Specially, the related semantics was used to construct the object partial order structure (OPOS) diagram in the purpose of obtaining the final semantic neighbor set. Technically, set a threshold of the word frequency to select the labels with the higher frequency as the final keywords. More remarkably, the experimental results showed that the method effectively improves precision and recall rate of the annotation.

     

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