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Learning Semantic Concepts from Visual Data Using Neural Networks

机译:使用神经网络从视觉数据学习语义概念

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For content-based image retrieval techniques, query image is used to pick up and rank some relevant images from a database using some certain similarity metric. If semantic features are not involved in the modeling of visual data, the resulting system may demonstrate a disability of retrieving images likely associated with interesting semantic concepts of objects in the images. Therefore, issues on semantics representation, automatic extraction of semantic concepts from visual data, and effects of window size on the concepts recognition are needed to study. This paper describes an approach towards these problems. We first define a set of semantic concepts characterizing the outdoor images. Then, a neural network is employed to memory the semantic concepts through pattern learning techniques. Lastly, the well-trained neural networks will perform as a classifier to identify the predefined semantics within an image. Empirical studies and comparison with decision tree techniques are carried out.
机译:对于基于内容的图像检索技术,查询图像用于使用一些特定相似度量从数据库中拾取和排列一些相关图像。如果语义特征不涉及视觉数据的建模,则所得到的系统可以展示检索图像可能与图像中的对象的有趣语义概念相关联的图像的残疾。因此,需要在语义表示的问题,从视觉数据自动提取语义概念,并且需要对概念识别进行窗口大小的影响。本文描述了对这些问题的方法。我们首先定义一组描述户外图像的语义概念。然后,通过模式学习技术来使用神经网络来记住语义概念。最后,训练有素的神经网络将作为分类器执行以识别图像内的预定义语义。进行了与决策树技术的实证研究和比较。

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