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Research on the Image Description Algorithm of Double-Layer LSTM Based on Adaptive Attention Mechanism

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  • Cifeng Qin
  • Wenyin Gong
  • Xiang Li
  • Paolo Spagnolo

Abstract

Image text description is a multimodal data processing problem in the computer field, which involves the research tasks of computer vision and natural language processing. At present, the research focus of image text description task is mainly on the method based on deep learning. The work of this paper is mainly focused on the imprecise description of visual words and nonvisual words in the description of image description tasks in the image text description. An adaptive attention double-layer LSTM (long short-term memory) model based on coding-decoding is proposed. Compared with the algorithm based on the adaptive attention mechanism based on the coding-decoding framework, the evaluation index BLEU-1 is improved by 1.21%. The METEOR was 0.75% higher and CIDEr was 0.55%, while the indexes of BLEU-4 and ROUGE-L were not as good as those of the original model, but the index was not different. Although it cannot surpass all the performance indicators of the original model, the description of visual words and nonvisual words is more accurate in the actual image text description.

Suggested Citation

  • Cifeng Qin & Wenyin Gong & Xiang Li & Paolo Spagnolo, 2022. "Research on the Image Description Algorithm of Double-Layer LSTM Based on Adaptive Attention Mechanism," Mathematical Problems in Engineering, Hindawi, vol. 2022, pages 1-9, May.
  • Handle: RePEc:hin:jnlmpe:2315341
    DOI: 10.1155/2022/2315341
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