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Deep Spatial-Semantic Attention for Fine-Grained Sketch-Based Image Retrieval

机译:基于细粒草图的图像检索的深空间 - 语义关注

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Human sketches are unique in being able to capture both the spatial topology of a visual object, as well as its subtle appearance details. Fine-grained sketch-based image retrieval (FG-SBIR) importantly leverages on such fine-grained characteristics of sketches to conduct instance-level retrieval of photos. Nevertheless, human sketches are often highly abstract and iconic, resulting in severe misalignments with candidate photos which in turn make subtle visual detail matching difficult. Existing FG-SBIR approaches focus only on coarse holistic matching via deep cross-domain representation learning, yet ignore explicitly accounting for fine-grained details and their spatial context. In this paper, a novel deep FG-SBIR model is proposed which differs significantly from the existing models in that: (1) It is spatially aware, achieved by introducing an attention module that is sensitive to the spatial position of visual details; (2) It combines coarse and fine semantic information via a shortcut connection fusion block; and (3) It models feature correlation and is robust to misalignments between the extracted features across the two domains by introducing a novel higher-order learnable energy function (HOLEF) based loss. Extensive experiments show that the proposed deep spatial-semantic attention model significantly outperforms the state-of-the-art.
机译:人类草图是独特的,可以捕获视觉物体的空间拓扑以及其微妙的外观细节。基于细粒的素描图像检索(FG-SBIR)重要地利用如此细粒度的草图特征来进行案例级检索照片。然而,人类草图通常是高度抽象和标志性的,导致候选照片的严重未对准,又一次使微妙的视觉细节匹配困难。现有的FG-SBIR方法仅通过深度跨域表示学习突出粗略匹配,但忽略了明确核对细节细节及其空间环境。在本文中,提出了一种新的FG-SBIR模型,其与现有模型显着不同:(1)通过引入对视觉细节的空间位置敏感的注意模块来实现的。 (2)它通过快捷方式连接融合块结合粗略和精细的语义信息; (3)IT模型特征相关性,并且通过引入基于新的高阶学习能量功能(Holef)丢失,对两个域中提取特征之间的未对准是强大的。广泛的实验表明,提出的深度空间 - 语义关注模型显着优于现有技术。

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