具有拒绝未知能力的分类系统

Soma Shiraishi, Katsumi Kikuchi, K. Iwamoto
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引用次数: 3

摘要

在本文中,我们提出了一种新的具有拒绝未知输入能力的对象分类方法。在现实世界的应用程序中,例如基于图像识别的结帐系统,在正确分类注册对象的同时拒绝未知输入是至关重要的。具有softmax输出的传统基于深度学习的分类系统在未知对象上存在过度自信的问题。我们从两个方面着手解决这个问题。首先,我们将基于度量学习的人脸验证方法整合到目标分类中。其次,我们通过提出一种新颖的“边际未知损失”,在训练阶段利用可用的未注册对象(已知未知数)。在实验中,我们通过确认它优于传统的基于softmax的方法,该方法也使用已知的未知数,在两个数据集上,MNIST数据集和零售产品数据集,在召回率方面具有低的假阳性率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification System with Capability to Reject Unknowns
In this paper, we propose a novel method for object classification with capability to reject unknown inputs. In the real world application such as an image-recognition-based checkout system, it is crucial to reject unknown inputs while correctly classifying registered objects. Conventional deep-learning-based classification systems with softmax output suffer from overconfident score on unknown objects. We tackled the problem by the following two approaches. First, we incorporated a metric-learning-based method proposed for face verification into object classification. Second, we utilize available unregistered objects (known unknowns) in the training phase by proposing a novel “Margined Unknown Loss”. In the experiment, we showed the effectiveness of the proposed method by confirming that it outperformed conventional softmax-based approaches which also use the known unknowns, on two datasets, MNIST dataset and a retail product dataset, in terms of Recall at a low false positive rate.
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