跨域表示的向量学习

Shagan Sah, Chi Zhang, Thang Nguyen, D. Peri, Ameya Shringi, R. Ptucha
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引用次数: 3

摘要

近年来,生成对抗网络在图像生成任务中得到了广泛的应用。然而,这些模型与复杂的学习机制相关联,需要非常大的相关数据集。这项工作借鉴了图像和视频字幕模型的概念,形成了一个图像生成框架。该模型以类似于循环字幕模型的方式进行训练,并使用学习到的权重进行图像生成。这是在相反的方向上完成的,其中输入是一个标题,输出是一个图像。从一个编码器-解码器模型中提取句子和帧的向量表示,该模型最初是在相似的句子和图像对上进行训练的。我们的模型以自然语言标题为条件生成图像。我们利用序列到序列模型来生成合成字幕,这些字幕具有与鲁棒图像生成相同的含义。我们的方法的一个关键优势是传统的图像字幕数据集可以用于合成句子释义。结果表明,通过多个标题生成的图像更能捕获标题族的语义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vector Learning for Cross Domain Representations
Recently, generative adversarial networks have gained a lot of popularity for image generation tasks. However, such models are associated with complex learning mechanisms and demand very large relevant datasets. This work borrows concepts from image and video captioning models to form an image generative framework. The model is trained in a similar fashion as recurrent captioning model and uses the learned weights for image generation. This is done in an inverse direction, where the input is a caption and the output is an image. The vector representation of the sentence and frames are extracted from an encoder-decoder model which is initially trained on similar sentence and image pairs. Our model conditions image generation on a natural language caption. We leverage a sequence-to-sequence model to generate synthetic captions that have the same meaning for having a robust image generation. One key advantage of our method is that the traditional image captioning datasets can be used for synthetic sentence paraphrases. Results indicate that images generated through multiple captions are better at capturing the semantic meaning of the family of captions.
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