A Cross-Modal Image and Text Retrieval Method Based on Efficient Feature Extraction and Interactive Learning CAE

Sci. Program. Pub Date : 2022-01-10 DOI:10.1155/2022/7314599
Xiuye Yin, Liyong Chen
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引用次数: 3

Abstract

In view of the complexity of the multimodal environment and the existing shallow network structure that cannot achieve high-precision image and text retrieval, a cross-modal image and text retrieval method combining efficient feature extraction and interactive learning convolutional autoencoder (CAE) is proposed. First, the residual network convolution kernel is improved by incorporating two-dimensional principal component analysis (2DPCA) to extract image features and extracting text features through long short-term memory (LSTM) and word vectors to efficiently extract graphic features. Then, based on interactive learning CAE, cross-modal retrieval of images and text is realized. Among them, the image and text features are respectively input to the two input terminals of the dual-modal CAE, and the image-text relationship model is obtained through the interactive learning of the middle layer to realize the image-text retrieval. Finally, based on Flickr30K, MSCOCO, and Pascal VOC 2007 datasets, the proposed method is experimentally demonstrated. The results show that the proposed method can complete accurate image retrieval and text retrieval. Moreover, the mean average precision (MAP) has reached more than 0.3, the area of precision-recall rate (PR) curves are better than other comparison methods, and they are applicable.
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基于高效特征提取和交互式学习CAE的跨模态图像和文本检索方法
针对多模态环境的复杂性和现有浅层网络结构无法实现高精度的图像和文本检索,提出了一种结合高效特征提取和交互学习卷积自编码器(CAE)的跨模态图像和文本检索方法。首先,对残差网络卷积核进行改进,结合二维主成分分析(2DPCA)提取图像特征,利用长短期记忆(LSTM)和词向量提取文本特征,有效提取图形特征;然后,基于交互式学习CAE,实现了图像和文本的跨模态检索。其中,将图像和文本特征分别输入到双模CAE的两个输入终端,通过中间层的交互学习得到图像-文本关系模型,实现图像-文本检索。最后,基于Flickr30K、MSCOCO和Pascal VOC 2007数据集,对该方法进行了实验验证。结果表明,该方法能够完成准确的图像检索和文本检索。平均精密度(MAP)达到0.3以上,精确召回率(PR)曲线面积优于其他比较方法,具有一定的适用性。
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