一种基于CNN+GRU混合深度学习技术的图像字幕算法

Rana Adnan Ahmad, Muhammad Azhar, Hina Sattar
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引用次数: 1

摘要

编码器-解码器框架的图像字幕在过去十年中取得了巨大的进步,其中主要使用CNN作为编码器,使用LSTM作为解码器。尽管在简单图像的准确性方面取得了令人印象深刻的成就,但在时间复杂度和空间复杂度效率方面却有所欠缺。除此之外,对于具有大量信息和对象的复杂图像,由于缺乏对图像中所呈现场景的语义理解,该CNN-LSTM对的性能呈指数级下降。因此,考虑到这些问题,我们提出了CNN-GRU编码器解码框架,用于字幕到图像重构器,以处理语义上下文以及时间复杂性。通过考虑解码器的隐藏状态,对输入图像及其相似的语义表示进行重构,并在模型训练期间将语义重构器的重构分数与似然结合使用,以评估生成的标题的质量。因此,解码器接收到改进的语义信息,增强了标题生成过程。在模型测试中,结合重建分数和对数似然来选择最合适的标题也是可行的。建议的模型在时间复杂度和准确性方面优于最先进的LSTM-A5模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Image captioning algorithm based on the Hybrid Deep Learning Technique (CNN+GRU)
Image captioning by the encoder-decoder framework has shown tremendous advancement in the last decade where CNN is mainly used as encoder and LSTM is used as a decoder. Despite such an impressive achievement in terms of accuracy in simple images, it lacks in terms of time complexity and space complexity efficiency. In addition to this, in case of complex images with a lot of information and objects, the performance of this CNN-LSTM pair downgraded exponentially due to the lack of semantic understanding of the scenes presented in the images. Thus, to take these issues into consideration, we present CNN-GRU encoder decode framework for caption-to-image reconstructor to handle the semantic context into consideration as well as the time complexity. By taking the hidden states of the decoder into consideration, the input image and its similar semantic representations is reconstructed and reconstruction scores from a semantic reconstructor are used in conjunction with likelihood during model training to assess the quality of the generated caption. As a result, the decoder receives improved semantic information, enhancing the caption production process. During model testing, combining the reconstruction score and the log-likelihood is also feasible to choose the most appropriate caption. The suggested model outperforms the state-of-the-art LSTM-A5 model for picture captioning in terms of time complexity and accuracy.
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