this two-level semantic annotation research is of great significance to the semantic-based image retrieval system.
这两个层次的语义标注研究对于动画素材图像语义检索系统的高效运行有着重要意义。
this method overcomes the limit of the traditional statistical based semantic annotation method. it improved the accuracy and efficiency of image semantic annotation.
该方法克服了传统的基于统计的语义标注方法效率低、準确率低的缺点,有效提高了图像语义标注的準确率和效率。
this paper proposes a method of image semantic annotation and retrieval based on concept distribution.
基于概念分布进行检索是实现图像语义检索的方法之一。
as the main technical basis for the semantic web, ontology is the most popular technology used to solve the semantic annotation of information.
作为新一代网络——语义网的主要技术基础,本体是目前最流行的可用来解决信息的语义标注的新技术。
at present, most of video semantic annotation methods are based on statistic theory. the methods use supervised learning method to do semantic label.
目前已有的视频语义标注方法多是基于统计学理论,采用全监督学习方法进行语义标注工作。
in the animation image retrieval system, image semantic annotation has a directly influence on the result of image retrieval.
在动画素材图像的检索系统中,图像语义标注的质量直接影响了检索的效果。
in order to improve the performance of the image annotation, an image semantic annotation method based on multi-modal relational graph was proposed.
为了改善图像标注的性能,提出了一种基于多模态关联图的图像语义标注方法。
its essence is to realize semantic annotation of academic resources data and complete the domain knowledge description under the guidance of the conceptual model of the ontology.
其实质是在本体概念模型的指导下,实现对学术资源数据的语义标注,完成领域内的知识描述。
in this paper, the animated image semantic annotation template and norm are proposed to improve multi-level semantic annotation from the objects, events, scenes, space relations on the image.
本文提出了动画素材图像语义标注模板和标注规范,从对象、事件、场景、空间关系等方面对图像的多级语义进行完善的标注。