Relational Proxies: Fine-Grained Relationships as Zero-Shot Discriminators

Abhra Chaudhuri;Massimiliano Mancini;Zeynep Akata;Anjan Dutta
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Abstract

Visual categories that largely share the same set of local parts cannot be discriminated based on part information alone, as they mostly differ in the way the local parts relate to the overall global structure of the object. We propose Relational Proxies , a novel approach that leverages the relational information between the global and local views of an object for encoding its semantic label, even for categories it has not encountered during training. Starting with a rigorous formalization of the notion of distinguishability between categories that share attributes, we prove the necessary and sufficient conditions that a model must satisfy in order to learn the underlying decision boundaries to tell them apart. We design Relational Proxies based on our theoretical findings and evaluate it on seven challenging fine-grained benchmark datasets and achieve state-of-the-art results on all of them, surpassing the performance of all existing works with a margin exceeding 4% in some cases. We additionally show that Relational Proxies also generalizes to the zero-shot setting, where it can efficiently leverage emergent relationships among attributes and image views to generalize to unseen categories, surpassing current state-of-the-art in both the non-generative and generative settings. Implementation is available at https://github.com/abhrac/relational-proxies .
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关系代理:细粒度关系作为零误差判别器
视觉类别在很大程度上具有相同的局部部分,但不能仅根据局部信息进行区分,因为它们在局部部分与对象整体结构的关联方式上存在很大差异。我们提出了 "关系代理"(Relational Proxies)这一新颖的方法,利用物体的全局视图和局部视图之间的关系信息来编码其语义标签,即使是在训练过程中没有遇到过的类别也不例外。我们首先对共享属性的类别之间的可区分性概念进行了严格的形式化,然后证明了模型必须满足的必要条件和充分条件,以便学习底层决策边界来区分这些类别。我们根据理论发现设计了关系代理,并在七个具有挑战性的细粒度基准数据集上对其进行了评估,在所有数据集上都取得了最先进的结果,在某些情况下以超过 4% 的优势超越了所有现有作品的性能。此外,我们还证明了关系代理还能推广到零镜头设置,在零镜头设置中,它能有效地利用属性和图像视图之间的新兴关系来推广到未见的类别,在非生成和生成设置中都超越了当前最先进的技术。实施方案将在验收后公布。
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