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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Recognition of attentive objects with a concept association network for image annotation
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Recognition of attentive objects with a concept association network for image annotation

机译:使用概念关联网络识别注意力对象以进行图像注释

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摘要

With the advancement of imaging techniques and IT technologies, image retrieval has become a bottle neck. The key for efficient and effective image retrieval is by a text-based approach in which automatic image annotation is a critical task. As an important issue, the metadata of the annotation, i.e., the basic unit of an image to be labeled, has not been fully studied. A habitual way is to label the segments which are produced by a segmentation algorithm. However, after a segmentation process an object has often been broken into pieces, which not only produces noise for annotation but also increases the complexity of the model. We adopt an attention-driven image interpretation method to extract attentive objects from an over-segmented image and use the attentive objects for annotation. By such doing, the basic unit of annotation has been upgraded from segments to attentive objects. Visual classifiers are trained and a concept association network (CAN) is constructed for object recognition. A CAN consists of a number of concept nodes in which each node is a trained neural network (visual classifier) to recognize a single object. The nodes are connected through their correlation links forming a network. Given that an image contains several unknown attentive objects, all the nodes in CAN generate their own responses which propagate to other nodes through the network simultaneously. For a combination of nodes under investigation, these loopy propagations can be characterized by a linear system. The response of a combination of nodes can be obtained by solving the linear system. Therefore, the annotation problem is converted into finding out the node combination with the maximum response. Annotation experiments show a better accuracy of attentive objects over segments and that the concept association network improves annotation performance.
机译:随着成像技术和IT技术的发展,图像检索已成为瓶颈。有效和有效的图像检索的关键是基于文本的方法,其中自动图像注释是一项关键任务。作为一个重要的问题,注释的元数据,即要标记的图像的基本单元,还没有被充分研究。一种习惯方法是标记由分段算法产生的分段。然而,在分割过程之后,对象经常被分解成碎片,这不仅会产生注释的噪音,还会增加模型的复杂性。我们采用注意力驱动的图像解释方法,从过度分割的图像中提取注意力对象,然后将注意力对象用于注释。这样,注释的基本单元已从片段升级为关注对象。训练视觉分类器,并构建用于对象识别的概念关联网络(CAN)。 CAN由多个概念节点组成,其中每个节点都是训练有素的神经网络(视觉分类器),用于识别单个对象。节点通过它们的相关链接连接在一起,形成一个网络。给定一个图像包含几个未知的关注对象,CAN中的所有节点都会生成自己的响应,这些响应会同时通过网络传播到其他节点。对于正在研究的节点的组合,可以通过线性系统来表征这些循环传播。通过求解线性系统可以获得节点组合的响应。因此,注释问题被转换为找出具有最大响应的节点组合。注释实验表明,在片段上的关注对象具有更高的准确性,并且概念关联网络提高了注释性能。

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