Long-Term Recurrent Merge Network Model for Image Captioning

Yang Fan, Jungang Xu, Yingfei Sun, Ben He
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引用次数: 5

Abstract

Language models based on Recurrent Neural Networks, e.g. Long Short Term Memory Network (LSTM), have shown strong ability in generating captions from image. However, in previous LSTM-based image captioning models, the image information is input to LSTM at 0th time step, and the network gradually forgets the image information, and only uses the language model to generate a simple description, leaving the potential in generating a better description. To address this challenge, in this paper, a Long-term Recurrent Merge Network (LRMN) model is proposed to merge the image feature at each step via a language model, which not only can improve the accuracy of image captioning, but also can describe the image better. Experimental results show that the proposed LRMN model has a promising improvement in image captioning.
图像标注的长期循环合并网络模型
基于递归神经网络的语言模型,如长短期记忆网络(LSTM),在从图像生成字幕方面表现出了较强的能力。然而,在之前基于LSTM的图像字幕模型中,图像信息在第0个时间步长输入到LSTM中,网络逐渐忘记了图像信息,只使用语言模型生成简单的描述,留下了生成更好描述的潜力。为了解决这一问题,本文提出了一种长期循环合并网络(LRMN)模型,通过语言模型对每一步的图像特征进行合并,不仅可以提高图像字幕的准确性,而且可以更好地描述图像。实验结果表明,所提出的LRMN模型在图像标注方面有很大的改进。
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