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A Graph-Based Object Description for Information Retrieval in Digital Image and Video Libraries

机译:基于图的对象描述,用于数字图像和视频库中的信息检索

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This work focuses on the search of a sample object (car) in video sequences and images based on shape similarity. We form a new description for cars, using relational graphs in order to annotate the images where the object of interest (OOI) is present. Query by text can be performed afterward to extract images of OOI from an automatically preprocessed database. The performance of the general retrieval systems is not satisfactory due to the gap between high level concepts and low level features. In this study we successfully fulfill this gap by using the graph-based description scheme which provides an efficient way to obtain high-level semantics from low-level features. We investigate the full potential of the shape matching method based on relational graph of objects with respect to its accuracy, efficiency, and scalability. We use hierarchical segmentation that increases the accuracy of the detection of the object in the transformed and occluded images. Many shape-based similarity retrieval methods perform well if the initial segmentation is adequate; however, in most cases segmentation without a priori information or user interference yields unsuccessful object extraction results. Compared to other methods, the major advantage of the proposed method is its ability to create semantic segments automatically from the combination of low level edge- or region-based segments using model-based segmentation. It is shown that a graph-based description of the complex objects with model-based segmentation is a powerful scheme for automatic annotation of images and Videos.
机译:这项工作着重于根据形状相似性在视频序列和图像中搜索样本对象(汽车)。我们使用关系图来对汽车进行新的描述,以便对存在感兴趣对象(OOI)的图像进行注释。随后可以执行按文本查询,以从自动预处理的数据库中提取OOI图像。由于高级概念和低级功能之间的差距,常规检索系统的性能并不令人满意。在这项研究中,我们通过使用基于图的描述方案成功地弥补了这一空白,该方案提供了一种从低级特征中获取高级语义的有效方法。我们研究基于对象关系图的形状匹配方法在准确性,效率和可伸缩性方面的全部潜力。我们使用分层分割来提高在变换和遮挡图像中检测对象的准确性。如果初始分割足够,许多基于形状的相似度检索方法将表现良好;但是,在大多数情况下,没有先验信息或用户干扰的分割会导致提取对象的结果失败。与其他方法相比,提出的方法的主要优点是它能够使用基于模型的分割从低级基于边缘或区域的分割组合中自动创建语义分割。结果表明,复杂对象的基于图的描述以及基于模型的分割是一种强大的自动注释图像和视频的方案。

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