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Unsupervised Image Style Embeddings for Retrieval and Recognition Tasks

机译:用于检索和识别任务的无监督图像样式嵌入

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We propose an unsupervised protocol for learning a neural embedding of visual style of images. Style similarity is an important measure for many applications such as style transfer, fashion search, art exploration, etc. However, computational modeling of style is a difficult task owing to its vague and subjective nature. Most methods for style based retrieval use supervised training with pre-defined categorization of images according to style. While this paradigm is suitable for applications where style categories are well-defined and curating large datasets according to such a categorization is feasible, in several other cases such a categorization is either ill-defined or does not exist. Our protocol for learning style based representations does not leverage categorical labels but a proxy measure for forming triplets of anchor, similar, and dissimilar images. Using these triplets, we learn a compact style embedding that is useful for style-based search and retrieval. The learned embeddings outperform other unsupervised representations for style-based image retrieval task on six datasets that capture different meanings of style. We also show that by fine-tuning the learned features with dataset-specific style labels, we obtain best results for image style recognition task on five of the six datasets.
机译:我们提出了一种无监督协议,用于学习图像的视觉样式的神经嵌入。样式相似性是许多应用程序(例如样式转移,时尚搜索,艺术探索等)的重要指标。但是,由于样式的模糊性和主观性,样式的计算建模是一项艰巨的任务。大多数基于样式的检索方法都使用监督训练,并根据样式对图像进行预定义的分类。尽管此范例适用于样式类别定义明确且根据这种分类管理大型数据集的应用是可行的,但在其他几种情况下,此类分类要么定义不明确,要么不存在。我们用于学习基于样式的表示的协议没有利用分类标签,而是一种代理度量,用于形成锚,相似和不相似图像的三元组。使用这些三元组,我们学习了紧凑的样式嵌入,这对于基于样式的搜索和检索很有用。对于在捕获不同样式含义的六个数据集上进行基于样式的图像检索任务而言,学习到的嵌入优于其他无监督表示。我们还显示,通过使用特定于数据集的样式标签对学习到的特征进行微调,我们可以在六个数据集中的五个数据集上获得最佳的图像样式识别任务结果。

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