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Learning to Sketch with Shortcut Cycle Consistency

机译:学习以快捷的周期一致性进行素描

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To see is to sketch - free-hand sketching naturally builds ties between human and machine vision. In this paper, we present a novel approach for translating an object photo to a sketch, mimicking the human sketching process. This is an extremely challenging task because the photo and sketch domains differ significantly. Furthermore, human sketches exhibit various levels of sophistication and abstraction even when depicting the same object instance in a reference photo. This means that even if photo-sketch pairs are available, they only provide weak supervision signal to learn a translation model. Compared with existing supervised approaches that solve the problem of D(E(photo)) → sketch), where E(·) and D(·) denote encoder and decoder respectively, we take advantage of the inverse problem (e.g., D(E(sketch) → photo), and combine with the unsupervised learning tasks of within-domain reconstruction, all within a multi-task learning framework. Compared with existing unsupervised approaches based on cycle consistency (i.e., D(E(D(E(photo)))) → photo), we introduce a shortcut consistency enforced at the encoder bottleneck (e.g., D(E(photo)) → photo) to exploit the additional self-supervision. Both qualitative and quantitative results show that the proposed model is superior to a number of state-of-the-art alternatives. We also show that the synthetic sketches can be used to train a better fine-grained sketch-based image retrieval (FG-SBIR) model, effectively alleviating the problem of sketch data scarcity.
机译:看到就是素描-徒手素描自然在人与机器视觉之间建立了联系。在本文中,我们提出了一种新颖的方法,可将物体照片转换为素描,模仿人类的素描过程。这是一项极富挑战性的任务,因为照片和草图域存在很大差异。此外,即使在参考照片中描绘同一对象实例时,人类草图也表现出各种复杂性和抽象性。这意味着即使可以使用照片素描对,它们也只能提供微弱的监督信号来学习翻译模型。与解决D(E(photo))→sketch)问题的现有监督方法(其中E(·)和D(·)分别表示编码器和解码器相比,我们利用了反问题(例如D(E (草图)→图片),并与域内重构的无监督学习任务结合在一起,都在一个多任务学习框架内。与现有的基于周期一致性的无监督方法(即D(E(D(E(photo ))))→图片),我们引入了在编码器瓶颈处强制执行的快捷方式一致性(例如,D(E(photo))→图片)以利用附加的自我监督,定性和定量结果均表明所提出的模型是优于许多最新的替代方案,我们还证明了合成草图可用于训练更好的基于草图的细粒度图像检索(FG-SBIR)模型,从而有效地缓解了草图数据的问题缺乏。

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