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Entropy and orthogonality based deep discriminative feature learning for object recognition

机译:基于熵和正交性的对象识别的深度鉴别特征学习

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摘要

Inspired by the class-selectivity of the neurons in the inferior temporal (IT) area of the human visual cortex, we propose a novel discriminative feature learning method to improve the object recognition performance of convolutional neural network (CNN) without increasing the network complexity. Specifically, we apply the proposed entropy-orthogonality loss (EOL) to the penultimate layer of the CNN models in the training phase. The EOL explicitly enables the feature vectors learned by a CNN model have the following properties: (1) each dimension of the feature vectors only responds strongly to as few classes as possible, and (2) the feature vectors from different classes are as orthogonal as possible. When combined with the softmax loss, the EOL not only can enlarge the differences in the between-class feature vectors, but also can reduce the variations in the within-class feature vectors. Therefore, the discriminative ability of the learned feature vectors is highly improved. The EOL is general and independent of the CNN structure. Comprehensive experimental comparisons with both the image classification and face verification task on several benchmark datasets demonstrate that utilizing the proposed EOL during training can remarkably improve performance of CNN models compared to the corresponding baseline models trained without utilizing the EOL. (C) 2018 Elsevier Ltd. All rights reserved.
机译:灵感来自人类视觉皮层的下颞(IT)区域的神经元的类选择性,我们提出了一种新颖的鉴别特征学习方法,以改善卷积神经网络(CNN)的物体识别性能而不增加网络复杂性。具体地,我们将建议的熵 - 正交性损失(EOL)应用于训练阶段的CNN模型的倒数第二层。 EOL明确启用CNN模型学习的特征向量具有以下属性:(1)特征向量的每个维度仅响应尽可能少的类,并且(2)来自不同类别的特征向量与正交一样正交可能的。当与SoftMax丢失相结合时,EOL不仅可以扩大课堂之间的差异,而且还可以降低类内部特征向量的变化。因此,学习特征向量的鉴别能力高度改善。 EOL是一般的,并且独立于CNN结构。在若干基准数据集中的图像分类和面部验证任务中的综合实验比较表明,与在没有利用EOL的相应基线模型相比,利用所提出的EOL可以显着提高CNN模型的性能。 (c)2018年elestvier有限公司保留所有权利。

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