论文标题

PMAL:通过强大的原型挖掘开放式识别

PMAL: Open Set Recognition via Robust Prototype Mining

论文作者

Lu, Jing, Xu, Yunxu, Li, Hao, Cheng, Zhanzhan, Niu, Yi

论文摘要

开放式识别(OSR)一直是一个新兴的话题。除了识别预定义的类外,系统还需要拒绝未知数。原型学习是解决问题的潜在方式,因为它在已知和未知数之间的歧视中迫切需要提高表征内的紧凑性的能力。在这项工作中,我们提出了一个新颖的原型挖掘和学习(PMAL)框架。在优化嵌入空间的阶段之前,它具有原型挖掘机制,明确考虑了两个关键特性,即原型集的高质量和多样性。具体而言,首先根据数据不确定性学习从训练样本中提取一组高质量的候选者,避免了意外噪声的干扰。考虑到对象的多种外观,即使在单个类别中,也提出了基于多样性的原型集过滤策略。因此,可以更好地优化嵌入空间以区分预定义的类别以及已知和未知数。广泛的实验验证了原型挖掘中所包含的两个良好特征(即高质量和多样性),并显示了与最先进的框架相比,提出的框架的出色性能。

Open Set Recognition (OSR) has been an emerging topic. Besides recognizing predefined classes, the system needs to reject the unknowns. Prototype learning is a potential manner to handle the problem, as its ability to improve intra-class compactness of representations is much needed in discrimination between the known and the unknowns. In this work, we propose a novel Prototype Mining And Learning (PMAL) framework. It has a prototype mining mechanism before the phase of optimizing embedding space, explicitly considering two crucial properties, namely high-quality and diversity of the prototype set. Concretely, a set of high-quality candidates are firstly extracted from training samples based on data uncertainty learning, avoiding the interference from unexpected noise. Considering the multifarious appearance of objects even in a single category, a diversity-based strategy for prototype set filtering is proposed. Accordingly, the embedding space can be better optimized to discriminate therein the predefined classes and between known and unknowns. Extensive experiments verify the two good characteristics (i.e., high-quality and diversity) embraced in prototype mining, and show the remarkable performance of the proposed framework compared to state-of-the-arts.

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