Image inspired Chinese couplet generation

Web Intell. Pub Date : 2020-09-30 DOI:10.3233/WEB-200443
Shengqiong Yuan, Luo Zhong, Lin Li
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Abstract

Chinese couplets, as one of the traditional Chinese culture, is the treasure of Chinese civilization and the inheritance of Chinese history. Given a sentence (namely an antecedent clause), people reply with another sentence (namely a subsequent clause) equal in length. Because of the complexity of the semantic and grammatical rules of couplet, it is not easy to create a suitable couplet that meets the requirements of sentence pattern, context, and flatness. With the development of neural models and natural language processing, automatic generation of Chinese couplets has drawn significant attention due to its artistic and cultural value, most of these works mainly focus on generating couplet by given text information, while visual inspirations for couplet generation have been rarely explored. In this paper, we design a Chinese couplet generation model based on NIC (Neural Image Caption), which can compose a piece of couplet suitable to the artistic conception in an image. At first, we use the improved VGG16 model to predict the input image. The content of the image can be automatically recognized and the corresponding description are generated and translated into Chinese keywords. Then, the encoder-decoder framework is used repeatedly to process these keywords, and finally the couplet can be generated. Moreover, to satisfy special characteristics of couplets, we incorporate the attention mechanism into the encoding-decoding process, which greatly improves the accuracy of couplets generated automatically.
意象启发了中国的对联一代
中国对联作为中国传统文化之一,是中华文明的瑰宝和中国历史的传承。给出一个句子(即一个先行句),人们用另一个长度相等的句子(即一个后继句)来回答。由于对联的语义和语法规则的复杂性,要创作出符合句式、语境和平直性要求的对联并不容易。随着神经模型和自然语言处理技术的发展,楹联的自动生成因其艺术和文化价值而受到人们的广泛关注,但这些研究大多集中在利用给定的文本信息生成楹联,而对楹联生成的视觉灵感的探索却很少。在本文中,我们设计了一个基于NIC (Neural Image Caption)的中文对联生成模型,该模型可以生成一幅符合图像意境的对联。首先,我们使用改进的VGG16模型对输入图像进行预测。可以自动识别图像的内容,生成相应的描述,并翻译成中文关键词。然后,使用编码器-解码器框架对这些关键字进行重复处理,最终生成对联。此外,为了满足对联的特殊特性,我们将注意机制融入到对联的编解码过程中,大大提高了对联自动生成的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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