Label and Distribution-discriminative Dual Representation Learning for Out-of-Distribution Detection

06/19/2022
by   Zhilin Zhao, et al.
0

To classify in-distribution samples, deep neural networks learn label-discriminative representations, which, however, are not necessarily distribution-discriminative according to the information bottleneck. Therefore, trained networks could assign unexpected high-confidence predictions to out-of-distribution samples drawn from distributions differing from that of in-distribution samples. Specifically, networks extract the strongly label-related information from in-distribution samples to learn the label-discriminative representations but discard the weakly label-related information. Accordingly, networks treat out-of-distribution samples with minimum label-sensitive information as in-distribution samples. According to the different informativeness properties of in- and out-of-distribution samples, a Dual Representation Learning (DRL) method learns distribution-discriminative representations that are weakly related to the labeling of in-distribution samples and combines label- and distribution-discriminative representations to detect out-of-distribution samples. For a label-discriminative representation, DRL constructs the complementary distribution-discriminative representation by an implicit constraint, i.e., integrating diverse intermediate representations where an intermediate representation less similar to the label-discriminative representation owns a higher weight. Experiments show that DRL outperforms the state-of-the-art methods for out-of-distribution detection.

READ FULL TEXT

page 1

page 4

page 10

page 11

research
06/19/2022

Out-of-distribution Detection by Cross-class Vicinity Distribution of In-distribution Data

Deep neural networks only learn to map in-distribution inputs to their c...
research
12/02/2022

Generative Reasoning Integrated Label Noise Robust Deep Image Representation Learning in Remote Sensing

The development of deep learning based image representation learning (IR...
research
03/13/2023

Label Distribution Learning from Logical Label

Label distribution learning (LDL) is an effective method to predict the ...
research
07/27/2021

Discriminative-Generative Representation Learning for One-Class Anomaly Detection

As a kind of generative self-supervised learning methods, generative adv...
research
03/27/2020

Hybrid Models for Open Set Recognition

Open set recognition requires a classifier to detect samples not belongi...
research
02/09/2021

Label Smoothed Embedding Hypothesis for Out-of-Distribution Detection

Detecting out-of-distribution (OOD) examples is critical in many applica...
research
09/28/2022

Label Distribution Learning via Implicit Distribution Representation

In contrast to multi-label learning, label distribution learning charact...

Please sign up or login with your details

Forgot password? Click here to reset