Self-Checkout Product Class Verification using Center Loss approach

Bernardas Ciapas, P. Treigys
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Abstract

The traditional image classifiers are not capable to verify if samples belong to specified classes due to several reasons: classifiers do not provide boundaries between in-class and out-of-class samples; although classifiers provide separation boundaries between known classes, classifiers" latent features tend to have high intra-class variance; classifiers often predict high probabilities for out-of-distribution samples; training classifiers on unbalanced data results in bias towards over-represented classes. The nature of the class verification problem requires a different loss function than the ubiquitous cross entropy loss in traditional classifiers: input to a class verification function includes a suggested class in addition to an image. As opposed to outlier detection, space is transformed to be not only separable, but discriminative between in-class and out-of-class inputs. In this paper, class verification based on a euclidean distance from the class centre is proposed and implemented. Class centres are learnt by training on a centre loss function. The method"s effectiveness is shown on a self-checkout image dataset of 194 food retail products. The results show that a two-fold loss function is not only useful to verify class, but does not degrade classification performance - thus, the same neural network is usable both for classification and verification.
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使用中心损失方法的自助结帐产品类别验证
由于以下几个原因,传统的图像分类器无法验证样本是否属于指定的类别:分类器没有提供类内和类外样本之间的边界;虽然分类器提供了已知类之间的分离边界,但分类器的潜在特征往往具有较高的类内方差;分类器通常预测超出分布的样本的高概率;在不平衡的数据上训练分类器会导致偏向于过度代表的类。类验证问题的本质需要一个不同于传统分类器中普遍存在的交叉熵损失的损失函数:类验证函数的输入除了图像之外还包括建议的类。与离群值检测相反,空间被转换为不仅可分离的,而且在类内和类外输入之间具有区别性。本文提出并实现了基于离类中心欧氏距离的类验证方法。通过训练中心损失函数来学习类中心。在194种食品零售产品的自助结账图像数据集上显示了该方法的有效性。结果表明,双重损失函数不仅对分类验证有用,而且不会降低分类性能,因此,同一神经网络既可用于分类又可用于验证。
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