Rethinking Feature Distribution for Loss Functions in Image Classification

03/08/2018
by   Weitao Wan, et al.
0

We propose a large-margin Gaussian Mixture (L-GM) loss for deep neural networks in classification tasks. Different from the softmax cross-entropy loss, our proposal is established on the assumption that the deep features of the training set follow a Gaussian Mixture distribution. By involving a classification margin and a likelihood regularization, the L-GM loss facilitates both a high classification performance and an accurate modeling of the training feature distribution. As such, the L-GM loss is superior to the softmax loss and its major variants in the sense that besides classification, it can be readily used to distinguish abnormal inputs, such as the adversarial examples, based on their features' likelihood to the training feature distribution. Extensive experiments on various recognition benchmarks like MNIST, CIFAR, ImageNet and LFW, as well as on adversarial examples demonstrate the effectiveness of our proposal.

READ FULL TEXT
research
02/09/2023

Optimized Hybrid Focal Margin Loss for Crack Segmentation

Many loss functions have been derived from cross-entropy loss functions ...
research
01/24/2019

Cross-Entropy Loss and Low-Rank Features Have Responsibility for Adversarial Examples

State-of-the-art neural networks are vulnerable to adversarial examples;...
research
07/26/2022

Distribution Learning Based on Evolutionary Algorithm Assisted Deep Neural Networks for Imbalanced Image Classification

To address the trade-off problem of quality-diversity for the generated ...
research
05/02/2018

End-to-End Residual CNN with L-GM Loss Speaker Verification System

We propose an end-to-end speaker verification system based on the neural...
research
07/25/2018

Unbounded Output Networks for Classification

We proposed the expected energy-based restricted Boltzmann machine (EE-R...
research
11/01/2018

Improving Adversarial Robustness by Encouraging Discriminative Features

Deep neural networks (DNNs) have achieved state-of-the-art results in va...
research
06/02/2013

Deep Learning using Linear Support Vector Machines

Recently, fully-connected and convolutional neural networks have been tr...

Please sign up or login with your details

Forgot password? Click here to reset