基于注意机制的儿童图像标题研究

Haibing Li, Xiang Li, Wenyon Wang
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引用次数: 0

摘要

Image Caption是指计算机通过研究对象的类别、属性、对象之间的关系等,利用神经网络识别图像内容,输出符合人们阅读习惯的文本语句的技术。本文建立了一个带有注意机制的图像标题网络模型。该模型首先使用卷积神经网络ResNet50提取图像特征,对图像信息进行编码,然后通过注意机制对图像特征进行加权。最后,采用三层堆叠LSTM网络对图像特征进行解码并输出描述语句。同时,本文采用平滑L1作为注意机制的损失函数,解决了由于梯度过大导致的梯度爆炸问题,增强了训练效果。因为Image Caption的整个过程就像是在制造机器“讲图片”,所以本文将这项技术应用到幼儿教育中,以达到帮助孩子“讲图片”的目的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Image Caption of Children's Image Based on Attention Mechanism
Image Caption refers to a technique in which the computer uses neural networks to identify the image content and output text statements that conform to people's reading habits by studying the object categories, attributes, relationships among objects, etc. This paper builds an Image Caption network model with Attention Mechanism. The model first uses convolution neural network ResNet50 to extract image features, encoding image information, and then weighted image features through Attention Mechanism. Finally, the three-layer stacked LSTM network is used to decode the image features and output the description statements. Also, in this paper, Smooth L1 is used as a loss function of the Attention Mechanism to solve the problem of gradient explosion caused by excessive gradient and strengthen the training effect. Because the whole process of Image Caption is like making the machine "talking about pictures ", this paper applies this technology to early childhood education in order to help children" talking about pictures "purpose.
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