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A Semantic Relation Graph Reasoning Network for Object Detection

机译:对象检测的语义关系图推理网络

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Object detection is a basic task in computer vision, and it plays an important role in the fields of robotics, security, and autonomous driving. However, the object detection algorithms at present usually extract the features of a single region and then perform detection, ignoring the semantic context between objects and scenes, which will produce bad effect in detection. In order to use the semantic context between objects and scenes, this paper considers object detection as a graph reasoning problem. In this paper, we obtain the prior knowledge of the co-occurrence among the objects and between objects and scenes through statistics of the dataset, then we mainly use two modules to extract the semantic relationship between objects and scenes. The first one extracts the prior knowledge between objects through of graph convolutional networks(GCN), and introduces the graph attention networks(GAT) to learn hidden knowledge about the semantic context relationship between objects adaptively, and by concating these knowledge then use them for detection. The second one uses MLP to generate S-L coefficients and multiplies the scene features and the S-L coefficients to obtain scene-object related features for object detection. We have conducted experiments to verify our method on the PASCAL VOC dataset, and the experiments show that our method can effectively improve the accuracy of object detection.
机译:对象检测是计算机愿景中的基本任务,它在机器人,安全性和自主驾驶领域发挥着重要作用。然而,目前目前的对象检测算法通常提取单个区域的特征,然后执行检测,忽略对象和场景之间的语义上下文,这将在检测中产生不良效果。为了在对象和场景之间使用语义上下文,本文将对象检测视为图形推理问题。在本文中,我们通过数据集的统计数据获得对象之间的共同发生以及对象和场景之间的事先知识,然后我们主要使用两个模块来提取对象和场景之间的语义关系。第一个提取通过图形卷积网络(GCN)的对象之间的先验知识,并介绍了图表关注网络(GAT),以便自适应地学习对象之间的语义上下文关系的隐藏知识,并且通过调整这些知识,然后使用它们进行检测。第二个使用MLP生成S-L系数,并将场景特征和S-L系数乘以以获得用于对象检测的场景对象相关特征。我们已经进行了实验,以验证我们在Pascal VOC数据集上的方法,实验表明,我们的方法可以有效地提高物体检测的准确性。

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