Orthogonal-Coding-Based Feature Generation for Transductive Open-Set
Recognition via Dual-Space Consistent Sampling
- URL: http://arxiv.org/abs/2207.05957v1
- Date: Wed, 13 Jul 2022 04:29:20 GMT
- Title: Orthogonal-Coding-Based Feature Generation for Transductive Open-Set
Recognition via Dual-Space Consistent Sampling
- Authors: Jiayin Sun and Qiulei Dong
- Abstract summary: Open-set recognition (OSR) aims to simultaneously detect unknown-class samples and classify known-class samples.
We propose an Iterative Transductive OSR framework, called IT-OSR, which implements three explored modules iteratively.
- Score: 11.929584800629673
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Open-set recognition (OSR) aims to simultaneously detect unknown-class
samples and classify known-class samples. Most of the existing OSR methods are
inductive methods, which generally suffer from the domain shift problem that
the learned model from the known-class domain might be unsuitable for the
unknown-class domain. Addressing this problem, inspired by the success of
transductive learning for alleviating the domain shift problem in many other
visual tasks, we propose an Iterative Transductive OSR framework, called
IT-OSR, which implements three explored modules iteratively, including a
reliability sampling module, a feature generation module, and a baseline update
module. Specifically, at each iteration, a dual-space consistent sampling
approach is presented in the explored reliability sampling module for selecting
some relatively more reliable ones from the test samples according to their
pseudo labels assigned by a baseline method, which could be an arbitrary
inductive OSR method. Then, a conditional dual-adversarial generative network
under an orthogonal coding condition is designed in the feature generation
module to generate discriminative sample features of both known and unknown
classes according to the selected test samples with their pseudo labels.
Finally, the baseline method is updated for sample re-prediction in the
baseline update module by jointly utilizing the generated features, the
selected test samples with pseudo labels, and the training samples. Extensive
experimental results on both the standard-dataset and the cross-dataset
settings demonstrate that the derived transductive methods, by introducing two
typical inductive OSR methods into the proposed IT-OSR framework, achieve
better performances than 15 state-of-the-art methods in most cases.
Related papers
- Multimodal Instruction Disassembly with Covariate Shift Adaptation and Real-time Implementation [3.70729078195191]
We introduce a new miniature platform, RASCv3, that can simultaneously collect power and EM measurements from a target device.
We devise a new approach to combine and select features from power and EM traces using information theory.
The recognition rates of offline and real-time instruction disassemblers are compared for single- and multi-modal cases.
arXiv Detail & Related papers (2024-12-10T17:00:23Z) - Diffusion-based Layer-wise Semantic Reconstruction for Unsupervised Out-of-Distribution Detection [30.02748131967826]
Unsupervised out-of-distribution (OOD) detection aims to identify out-of-domain data by learning only from unlabeled In-Distribution (ID) training samples.
Current reconstruction-based methods provide a good alternative approach by measuring the reconstruction error between the input and its corresponding generative counterpart in the pixel/feature space.
We propose the diffusion-based layer-wise semantic reconstruction approach for unsupervised OOD detection.
arXiv Detail & Related papers (2024-11-16T04:54:07Z) - Downstream-Pretext Domain Knowledge Traceback for Active Learning [138.02530777915362]
We propose a downstream-pretext domain knowledge traceback (DOKT) method that traces the data interactions of downstream knowledge and pre-training guidance.
DOKT consists of a traceback diversity indicator and a domain-based uncertainty estimator.
Experiments conducted on ten datasets show that our model outperforms other state-of-the-art methods.
arXiv Detail & Related papers (2024-07-20T01:34:13Z) - Combining X-Vectors and Bayesian Batch Active Learning: Two-Stage Active Learning Pipeline for Speech Recognition [0.0]
This paper introduces a novel two-stage active learning pipeline for automatic speech recognition (ASR)
The first stage utilizes unsupervised AL by using x-vectors clustering for diverse sample selection from unlabeled speech data.
The second stage incorporates a supervised AL strategy, with a batch AL method specifically developed for ASR.
arXiv Detail & Related papers (2024-05-03T19:24:41Z) - Exploiting Low-confidence Pseudo-labels for Source-free Object Detection [54.98300313452037]
Source-free object detection (SFOD) aims to adapt a source-trained detector to an unlabeled target domain without access to the labeled source data.
Current SFOD methods utilize a threshold-based pseudo-label approach in the adaptation phase.
We propose a new approach to take full advantage of pseudo-labels by introducing high and low confidence thresholds.
arXiv Detail & Related papers (2023-10-19T12:59:55Z) - Dual Adaptive Representation Alignment for Cross-domain Few-shot
Learning [58.837146720228226]
Few-shot learning aims to recognize novel queries with limited support samples by learning from base knowledge.
Recent progress in this setting assumes that the base knowledge and novel query samples are distributed in the same domains.
We propose to address the cross-domain few-shot learning problem where only extremely few samples are available in target domains.
arXiv Detail & Related papers (2023-06-18T09:52:16Z) - Integrative conformal p-values for powerful out-of-distribution testing
with labeled outliers [1.6371837018687636]
This paper develops novel conformal methods to test whether a new observation was sampled from the same distribution as a reference set.
The described methods can re-weight standard conformal p-values based on dependent side information from known out-of-distribution data.
The solution can be implemented either through sample splitting or via a novel transductive cross-validation+ scheme.
arXiv Detail & Related papers (2022-08-23T17:52:20Z) - MM-TTA: Multi-Modal Test-Time Adaptation for 3D Semantic Segmentation [104.48766162008815]
We propose and explore a new multi-modal extension of test-time adaptation for 3D semantic segmentation.
To design a framework that can take full advantage of multi-modality, each modality provides regularized self-supervisory signals to other modalities.
Our regularized pseudo labels produce stable self-learning signals in numerous multi-modal test-time adaptation scenarios.
arXiv Detail & Related papers (2022-04-27T02:28:12Z) - BatchFormerV2: Exploring Sample Relationships for Dense Representation
Learning [88.82371069668147]
BatchFormerV2 is a more general batch Transformer module, which enables exploring sample relationships for dense representation learning.
BatchFormerV2 consistently improves current DETR-based detection methods by over 1.3%.
arXiv Detail & Related papers (2022-04-04T05:53:42Z) - ANL: Anti-Noise Learning for Cross-Domain Person Re-Identification [25.035093667770052]
We propose an Anti-Noise Learning (ANL) approach, which contains two modules.
FDA module is designed to gather the id-related samples and disperse id-unrelated samples, through the camera-wise contrastive learning and adversarial adaptation.
Reliable Sample Selection ( RSS) module utilizes an Auxiliary Model to correct noisy labels and select reliable samples for the Main Model.
arXiv Detail & Related papers (2020-12-27T02:38:45Z) - Uncertainty Inspired RGB-D Saliency Detection [70.50583438784571]
We propose the first framework to employ uncertainty for RGB-D saliency detection by learning from the data labeling process.
Inspired by the saliency data labeling process, we propose a generative architecture to achieve probabilistic RGB-D saliency detection.
Results on six challenging RGB-D benchmark datasets show our approach's superior performance in learning the distribution of saliency maps.
arXiv Detail & Related papers (2020-09-07T13:01:45Z)
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.