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Image Indexing and Retrieval Using an ART-2A Neural Network Architecture

机译:使用ART-2A神经网络架构进行图像索引和检索

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摘要

Traditional content-based image retrieval (CBIR) systems use low-level features such as colors, shapes, and textures of images. Although, users make queries based on semantics, which are not easily related to such low-level characteristics. Recent works on CBIR confirm that researchers have been trying to map visual low-level characteristics and high-level semantics. The relation between low-level characteristics and image textual information has motivated this article which proposes a model for automatic classification and categorization of words associated to images. This proposal considers a self-organizing neural network architecture, which classifies textual information without previous learning. Experimental results compare the performance results of the text-based approach to an image retrieval system based on low-level features.
机译:传统的基于内容的图像检索(CBIR)系统使用低级功能,例如图像的颜色,形状和纹理。虽然,用户基于语义进行查询,但这些语义不容易与此类低级特征相关。有关CBIR的最新工作证实,研究人员一直在尝试绘制视觉的低层特征和高层语义。低级特征与图像文本信息之间的关系激发了本文的兴趣,本文提出了一种自动对与图像相关的单词进行自动分类和分类的模型。该提议考虑了一种自组织神经网络架构,该架构无需事先学习即可对文本信息进行分类。实验结果将基于文本的方法与基于低级特征的图像检索系统的性能结果进行了比较。

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