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Overall Loss for Deep Neural Networks

机译:深度神经网络的总体损失

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摘要

Convolutional Neural Network (CNN) have been widely used for image classification and computer vision tasks such as face recognition, target detection. Softmax loss is one of the most commonly used components to train CNN, which only penalizes the classification loss. So we consider how to train intra-class compactness and inter-class separability better. In this paper, we proposed an Overall Loss to make inter-class having a better separability, which means that Overall loss penalizes the difference between each center of classes. With Overall loss, we trained a robust CNN to achieve a better performance. Extensive experiments on MNIST, CIFAR10, LFW (face datasets for face recognition) demonstrate the effectiveness of the Overall loss. We have tried different models, visualized the experimental results and showed the effectiveness of our proposed Overall loss.
机译:卷积神经网络(CNN)已广泛用于图像分类和计算机视觉任务,例如面部识别,目标检测。 Softmax损失是训练CNN的最常用组件之一,它只会惩罚分类损失。因此,我们考虑如何更好地训练类内部的紧凑性和类间的可分离性。在本文中,我们提出了“总体损失”以使班级之间具有更好的可分离性,这意味着“总体损失”会惩罚每个班级中心之间的差异。由于总体损失,我们训练了一个强大的CNN,以实现更好的性能。在MNIST,CIFAR10,LFW(用于面部识别的面部数据集)上的大量实验证明了总体损失的有效性。我们尝试了不同的模型,将实验结果可视化并显示了我们提出的总体损失的有效性。

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