Linear Discriminant Analysis Metric Learning Using Siamese Neural Networks

Abin Jose, Qinglin Mei, D. Eschweiler, Ina Laube, J. Stegmaier
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Abstract

We propose a method for learning the Linear Discriminant Analysis (LDA) using a Siamese Neural Network (SNN) architecture for learning a low dimensional image descriptor. The novelty of our work is that we learn the LDA projection matrix between the final fully-connected layers of an SNN. An SNN architecture is used since the proposed loss maximizes the Kullback-Leibler divergence between the feature distributions from the two branches of an SNN. The network learns an optimized feature space having inherent properties pertaining to the learning of LDA. The learned image descriptors are a) low-dimensional, b) have small intra-class variance, c) large inter-class variance, and d) can distinguish the classes with linear decision hyperplanes. The proposed method has the advantage that LDA learning happens end-to-end. We measured the classification accuracy in the three datasets MNIST, CIFAR-10, and STL-10 and compared the performance with other state-of-the-art methods. We also measured the KL divergence between the class pairs and visualized the projections of feature vectors along the learned discriminant directions.
基于暹罗神经网络的线性判别分析度量学习
我们提出了一种学习线性判别分析(LDA)的方法,使用暹罗神经网络(SNN)架构来学习低维图像描述符。我们工作的新颖之处在于我们学习了SNN最终完全连接层之间的LDA投影矩阵。由于所提出的损失最大化了SNN两个分支的特征分布之间的Kullback-Leibler散度,因此使用了SNN架构。该网络学习了一个优化的特征空间,该特征空间具有与LDA学习相关的固有属性。学习到的图像描述子具有以下特点:a)低维,b)类内方差小,c)类间方差大,d)可以用线性决策超平面区分类。该方法的优点是LDA学习是端到端的。我们在三个数据集MNIST、CIFAR-10和STL-10中测量了分类精度,并将性能与其他最先进的方法进行了比较。我们还测量了类对之间的KL散度,并将特征向量沿学习到的判别方向的投影可视化。
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