Description-aware Fashion Image Inpainting with Convolutional Neural Networks in Coarse-to-Fine Manner

Furkan Kinli, B. Özcan, Mustafa Furkan Kıraç
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引用次数: 1

Abstract

Inpainting a particular missing region in an image is a challenging vision task, and promising improvements on this task have been achieved with the help of the recent developments in vision-related deep learning studies. Although it may have a direct impact on the decisions of AI-based fashion analysis systems, a limited number of studies for image inpainting have been done in fashion domain, so far. In this study, we propose a multi-modal generative deep learning approach for filling the missing parts in fashion images by constraining visual features with textual features extracted from image descriptions. Our model is composed of four main blocks which can be introduced as textual feature extractor, coarse image generator guided by textual features, fine image generator enhancing the coarse output, and lastly global and local discriminators improving refined outputs. Several experiments conducted on FashionGen dataset with different combination of neural network components show that our multi-modal approach is able to generate visually plausible patches to fill the missing parts in the images.
基于粗糙到精细方式的卷积神经网络的描述感知时尚图像绘制
在图像中绘制特定缺失区域是一项具有挑战性的视觉任务,在视觉相关深度学习研究的最新发展的帮助下,这项任务得到了有希望的改进。尽管它可能对基于人工智能的时尚分析系统的决策产生直接影响,但迄今为止,在时尚领域进行的图像绘画研究数量有限。在这项研究中,我们提出了一种多模态生成深度学习方法,通过从图像描述中提取文本特征来约束视觉特征来填充时尚图像中的缺失部分。我们的模型由四个主要块组成,它们分别是文本特征提取器、文本特征引导的粗图像生成器、增强粗输出的精细图像生成器以及改进精细化输出的全局和局部鉴别器。在不同神经网络成分组合的fasongen数据集上进行的实验表明,我们的多模态方法能够生成视觉上可信的补丁来填补图像中的缺失部分。
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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