Competing ratio loss for discriminative multi-class image classification

IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Ke Zhang , Yurong Guo , Xinsheng Wang , Dongliang Chang , Zhenbing Zhao , Zhanyu Ma , Tony X. Han
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引用次数: 4

Abstract

The development of deep convolutional neural network architecture is critical to the improvement of image classification task performance. Many image classification studies use deep convolutional neural network and focus on modifying the network structure to improve image classification performance. Conversely, our study focuses on loss function design. Cross-entropy Loss (CEL) has been widely used for training deep convolutional neural network for the task of multi-class classification. Although CEL has been successfully implemented in several image classification tasks, it only focuses on the posterior probability of the correct class. For this reason, a negative log likelihood ratio loss (NLLR) was proposed to better differentiate between the correct class and the competing incorrect ones. However, during the training of the deep convolutional neural network, the value of NLLR is not always positive or negative, which severely affects the convergence of NLLR. Our proposed competing ratio loss (CRL) calculates the posterior probability ratio between the correct class and the competing incorrect classes to further enlarge the probability difference between the correct and incorrect classes. We added hyperparameters to CRL, thereby ensuring its value to be positive and that the update size of backpropagation is suitable for the CRL’s fast convergence. To demonstrate the performance of CRL, we conducted experiments on general image classification tasks (CIFAR10/100, SVHN, ImageNet), the fine-grained image classification tasks (CUB200–2011, and Stanford Car), and the challenging face age estimation task (using Adience). Experimental results showed the effectiveness and robustness of the proposed loss function on different deep convolutional neural network architectures and different image classification tasks. Code is released at  https://github.com/guoyurong0104/CRL-code.

判别多类图像分类的竞争比损失
深度卷积神经网络体系结构的发展是提高图像分类任务性能的关键。许多图像分类研究使用深度卷积神经网络,并着重于修改网络结构以提高图像分类性能。相反,我们的研究侧重于损失函数的设计。交叉熵损失(Cross-entropy Loss, CEL)被广泛用于训练深度卷积神经网络的多类分类任务。虽然CEL已经在多个图像分类任务中成功实现,但它只关注正确类的后验概率。为此,提出了负对数似然比损失(NLLR)来更好地区分正确类别和竞争错误类别。然而,在深度卷积神经网络的训练过程中,NLLR的值并不总是正或负的,这严重影响了NLLR的收敛性。我们提出的竞争比率损失(CRL)计算正确类与竞争错误类之间的后验概率比,进一步扩大正确类与错误类之间的概率差。我们在CRL中增加了超参数,从而保证了CRL的值为正,并且保证了反向传播的更新大小适合CRL的快速收敛。为了验证CRL的性能,我们在一般图像分类任务(CIFAR10/100、SVHN、ImageNet)、细粒度图像分类任务(CUB200-2011、Stanford Car)和挑战性人脸年龄估计任务(使用Adience)上进行了实验。实验结果表明,所提出的损失函数在不同的深度卷积神经网络结构和不同的图像分类任务上具有有效性和鲁棒性。代码发布在https://github.com/guoyurong0104/CRL-code。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Neurocomputing
Neurocomputing 工程技术-计算机:人工智能
CiteScore
13.10
自引率
10.00%
发文量
1382
审稿时长
70 days
期刊介绍: Neurocomputing publishes articles describing recent fundamental contributions in the field of neurocomputing. Neurocomputing theory, practice and applications are the essential topics being covered.
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