Graph-based High-Order Relation Discovery for Fine-grained Recognition

Yifan Zhao, Ke Yan, Feiyue Huang, Jia Li
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引用次数: 43

Abstract

Fine-grained object recognition aims to learn effective features that can identify the subtle differences between visually similar objects. Most of the existing works tend to amplify discriminative part regions with attention mechanisms. Besides its unstable performance under complex backgrounds, the intrinsic interrelationship between different semantic features is less explored. Toward this end, we propose an effective graph-based relation discovery approach to build a contextual understanding of high-order relationships. In our approach, a high-dimensional feature bank is first formed and jointly regularized with semantic- and positional-aware high-order constraints, endowing rich attributes to feature representations. Second, to overcome the high-dimension curse, we propose a graph-based semantic grouping strategy to embed this high-order tensor bank into a low-dimensional space. Meanwhile, a group-wise learning strategy is proposed to regularize the features focusing on the cluster embedding center. With the collaborative learning of three modules, our module is able to grasp the stronger contextual details of fine-grained objects. Experimental evidence demonstrates our approach achieves new state-of-the-art on 4 widely-used fine-grained object recognition benchmarks.
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基于图的细粒度识别高阶关系发现
细粒度物体识别旨在学习有效的特征,可以识别视觉上相似的物体之间的细微差异。现有的研究大多倾向于通过注意机制放大辨别部分区域。除了它在复杂背景下的性能不稳定外,不同语义特征之间的内在相互关系也很少被探索。为此,我们提出了一种有效的基于图的关系发现方法,以建立对高阶关系的上下文理解。在我们的方法中,首先形成一个高维特征库,并与语义感知和位置感知的高阶约束联合正则化,赋予特征表示丰富的属性。其次,为了克服高维诅咒,我们提出了一种基于图的语义分组策略,将高阶张量库嵌入到低维空间中。同时,提出了一种以聚类嵌入中心为中心的群智能学习策略,对特征进行正则化。通过三个模块的协同学习,我们的模块能够更强地掌握细粒度对象的上下文细节。实验证据表明,我们的方法在4个广泛使用的细粒度对象识别基准上达到了最新水平。
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