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Neural network feature learning based on image self-encoding

机译:基于图像自我编码的神经网络特征学习

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With the rapid development of information technology and the arrival of the era of big data, people’s access to information is increasingly relying on information such as images. Today, image data are showing an increasing trend in the form of an index. How to use deep learning models to extract valuable information from massive data is very important. In the face of such a situation, people cannot accurately and timely find out the information they need. Therefore, the research on image retrieval technology is very important. Image retrieval is an important technology in the field of computer vision image processing. It realizes fast and accurate query of similar images in image database. The excellent feature representation not only can represent the category information of the image but also capture the relevant semantic information of the image. If the neural network feature learning expression is combined with the image retrieval field, it will definitely improve the application of image retrieval technology. To solve the above problems, this article studies the problems encountered in deep learning neural network feature learning based on image self-encoding and discusses its feature expression in the field of image retrieval. By adding the spatial relationship information obtained by image self-encoding in the neural network training process, the feature expression ability of the selected neural network is improved, and the neural network feature learning based on image coding is successfully applied to the popular field of image retrieval.
机译:随着信息技术的快速发展和大数据时代的到来,人们对信息的访问越来越依赖于图像的信息。如今,图像数据显示索引形式的趋势。如何使用深度学习模型从大规模数据中提取有价值的信息非常重要。面对这样的情况,人们无法准确,及时找出他们所需要的信息。因此,图像检索技术的研究非常重要。图像检索是计算机视觉图像处理领域的重要技术。它意识到图像数据库中的类似图像的快速准确查询。优异的特征表示不仅可以代表图像的类别信息,还可以捕获图像的相关语义信息。如果神经网络特征学习表达式与图像检索字段相结合,则肯定会改善图像检索技术的应用。为了解决上述问题,本文研究了基于图像自编码的深度学习神经网络特征学习中遇到的问题,并讨论了图像检索领域的特征表达。通过在神经网络训练过程中添加通过图像自编码获得的空间关系信息,改善了所选神经网络的特征表达能力,并且基于图像编码的神经网络特征学习成功应用于流行的图像字段恢复。

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