FAR-GAN:色彩控制的时尚服装再生

Gaurab Bhattacharya, Kuruvilla Abraham, Nikhil Kilari, V. B. Lakshmi, J. Gubbi
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引用次数: 2

摘要

时尚服装的自动再生是电子商务零售商提供预览所选服装所需颜色的一个重要方面。这有助于提高客户满意度和销售。在这项工作中,我们提出了一种对颜色进行明确控制的时尚服装合成工具FAR-GAN。该方法采用两步编码方法,对时尚服装及其边缘图的特征进行增强,提取风格信息。该信息由解码器中的目标颜色嵌入信息控制。为了控制合成服装图像的颜色,我们提出了颜色一致性损失。总的来说,该网络可以端到端进行训练,而不需要合并任何复杂的子单元,也不需要控制合成产品图像的颜色选择。我们进行了大量的实验和烧蚀研究,以展示我们的模型与几种最先进的方法相比的性能。结果反映了性能的改进和我们设计选择的合理性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FAR-GAN: Color-controlled Fashion Apparel Regeneration
Automatic fashion apparel regeneration is an important aspect for the e-commerce retailers to provide an opportunity to preview the selected dress in the desired color. This helps in improving customer satisfaction and sales. In this work, we propose FAR-GAN, a fashion apparel synthesis tool with explicit control on color. The proposed approach augments the features from the fashion apparel and its edge-map in a two-step encoding process to extract the style information. This information is controlled with the target color embedding information in the decoder. To control the color of the synthesized apparel image, we have proposed the color consistency loss. Overall, the network can be trained end-to-end without incorporating any complex sub-units and controlling the color of the choice for the synthesized product image. We have conducted extensive experiments and ablation study to showcase the performance of our model compared to several state-of-the-art methodologies. The results reflect improvement in performance and justification of our design choices.
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