Adversarial Reciprocal Points Learning for Open Set Recognition
- URL: http://arxiv.org/abs/2103.00953v2
- Date: Tue, 2 Mar 2021 02:04:04 GMT
- Title: Adversarial Reciprocal Points Learning for Open Set Recognition
- Authors: Guangyao Chen and Peixi Peng and Xiangqian Wang and Yonghong Tian
- Abstract summary: Open set recognition (OSR) aims to simultaneously classify the seen classes and identify the unseen classes as 'unknown'
We formulate the open space risk problem from the perspective of multi-class integration.
A novel learning framework, termed Adrial Reciprocal Point Learning (ARPL), is proposed to minimize the overlap of known distribution and unknown distributions.
- Score: 21.963137599375862
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Open set recognition (OSR), aiming to simultaneously classify the seen
classes and identify the unseen classes as 'unknown', is essential for reliable
machine learning.The key challenge of OSR is how to reduce the empirical
classification risk on the labeled known data and the open space risk on the
potential unknown data simultaneously. To handle the challenge, we formulate
the open space risk problem from the perspective of multi-class integration,
and model the unexploited extra-class space with a novel concept Reciprocal
Point. Follow this, a novel learning framework, termed Adversarial Reciprocal
Point Learning (ARPL), is proposed to minimize the overlap of known
distribution and unknown distributions without loss of known classification
accuracy. Specifically, each reciprocal point is learned by the extra-class
space with the corresponding known category, and the confrontation among
multiple known categories are employed to reduce the empirical classification
risk. Then, an adversarial margin constraint is proposed to reduce the open
space risk by limiting the latent open space constructed by reciprocal points.
To further estimate the unknown distribution from open space, an instantiated
adversarial enhancement method is designed to generate diverse and confusing
training samples, based on the adversarial mechanism between the reciprocal
points and known classes. This can effectively enhance the model
distinguishability to the unknown classes. Extensive experimental results on
various benchmark datasets indicate that the proposed method is significantly
superior to other existing approaches and achieves state-of-the-art
performance.
Related papers
- Reciprocal Point Learning Network with Large Electromagnetic Kernel for SAR Open-Set Recognition [6.226365654670747]
Open Set Recognition (OSR) aims to categorize known classes while denoting unknown ones as "unknown"
To enhance open-set SAR classification, a method called scattering kernel with reciprocal learning network is proposed.
Proposal is made to design convolutional kernels based on large-sized attribute scattering center models.
arXiv Detail & Related papers (2024-11-07T13:26:20Z) - Exploring Diverse Representations for Open Set Recognition [51.39557024591446]
Open set recognition (OSR) requires the model to classify samples that belong to closed sets while rejecting unknown samples during test.
Currently, generative models often perform better than discriminative models in OSR.
We propose a new model, namely Multi-Expert Diverse Attention Fusion (MEDAF), that learns diverse representations in a discriminative way.
arXiv Detail & Related papers (2024-01-12T11:40:22Z) - Safe Multi-agent Learning via Trapping Regions [89.24858306636816]
We apply the concept of trapping regions, known from qualitative theory of dynamical systems, to create safety sets in the joint strategy space for decentralized learning.
We propose a binary partitioning algorithm for verification that candidate sets form trapping regions in systems with known learning dynamics, and a sampling algorithm for scenarios where learning dynamics are not known.
arXiv Detail & Related papers (2023-02-27T14:47:52Z) - Risk Consistent Multi-Class Learning from Label Proportions [64.0125322353281]
This study addresses a multiclass learning from label proportions (MCLLP) setting in which training instances are provided in bags.
Most existing MCLLP methods impose bag-wise constraints on the prediction of instances or assign them pseudo-labels.
A risk-consistent method is proposed for instance classification using the empirical risk minimization framework.
arXiv Detail & Related papers (2022-03-24T03:49:04Z) - Spatial Location Constraint Prototype Loss for Open Set Recognition [17.725082940096257]
How to reduce the open space risk is the key of open set recognition.
This paper explores the origin of the open space risk by analyzing the distribution of known and unknown classes features.
arXiv Detail & Related papers (2021-10-21T09:34:01Z) - Adversarial Motorial Prototype Framework for Open Set Recognition [16.22539914400299]
Open set recognition is designed to identify known classes and to reject unknown classes simultaneously.
This paper proposes the motorial prototype framework (MPF) which classifies known classes according to the prototype classification idea.
Second, this paper proposes the adversarial motorial prototype framework (AMPF) based on the MPF.
Third, this paper proposes an upgraded version of the AMPF, AMPF++, which adds much more generated unknown samples into the training phase.
arXiv Detail & Related papers (2021-07-13T07:31:34Z) - Deep Clustering by Semantic Contrastive Learning [67.28140787010447]
We introduce a novel variant called Semantic Contrastive Learning (SCL)
It explores the characteristics of both conventional contrastive learning and deep clustering.
It can amplify the strengths of contrastive learning and deep clustering in a unified approach.
arXiv Detail & Related papers (2021-03-03T20:20:48Z) - Learning Open Set Network with Discriminative Reciprocal Points [70.28322390023546]
Open set recognition aims to simultaneously classify samples from predefined classes and identify the rest as 'unknown'
In this paper, we propose a new concept, Reciprocal Point, which is the potential representation of the extra-class space corresponding to each known category.
Based on the bounded space constructed by reciprocal points, the risk of unknown is reduced through multi-category interaction.
arXiv Detail & Related papers (2020-10-31T03:20:31Z) - Open Set Recognition with Conditional Probabilistic Generative Models [51.40872765917125]
We propose Conditional Probabilistic Generative Models (CPGM) for open set recognition.
CPGM can detect unknown samples but also classify known classes by forcing different latent features to approximate conditional Gaussian distributions.
Experiment results on multiple benchmark datasets reveal that the proposed method significantly outperforms the baselines.
arXiv Detail & Related papers (2020-08-12T06:23:49Z) - Conditional Gaussian Distribution Learning for Open Set Recognition [10.90687687505665]
We propose Conditional Gaussian Distribution Learning (CGDL) for open set recognition.
In addition to detecting unknown samples, this method can also classify known samples by forcing different latent features to approximate different Gaussian models.
Experiments on several standard image reveal that the proposed method significantly outperforms the baseline method and achieves new state-of-the-art results.
arXiv Detail & Related papers (2020-03-19T14:32:08Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.