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A Benchmark for Inpainting of Clothing Images with Irregular Holes

机译:一种带有不规则孔的服装图像的基准

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Fashion image understanding is an active research field with a large number of practical applications for the industry. Despite its practical impacts on intelligent fashion analysis systems, clothing image inpainting has not been extensively examined yet. For that matter, we present an extensive benchmark of clothing image inpainting on well-known fashion datasets. Furthermore, we introduce the use of a dilated version of partial convolutions, which efficiently derive the mask update step, and empirically show that the proposed method reduces the required number of layers to form fully-transparent masks. Experiments show that dilated partial convolutions (DPConv) improve the quantitative inpainting performance when compared to the other inpainting strategies, especially it performs better when the mask size is 20% or more of the image.
机译:时尚形象理解是一个活跃的研究领域,具有大量的行业实际应用。 尽管对智能时装分析系统产生了实际影响,但尚未进行广泛检查服装形象染色。 就此而言,我们在众所周知的时装数据集上呈现了广泛的服装图像染色基准。 此外,我们介绍了使用扩张版的部分卷积,这有效地推导了掩模更新步骤,并经验证明所提出的方法减少了所需的层数以形成完全透明的掩模。 实验表明,与其他染色策略相比,扩张的部分卷积(DPCONV)提高了定量的染色性能,特别是当掩模尺寸为20%或更多的图像时它更好地执行。

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