Model Evaluation for Domain Identification of Unknown Classes in
Open-World Recognition: A Proposal
- URL: http://arxiv.org/abs/2312.05454v1
- Date: Sat, 9 Dec 2023 03:54:25 GMT
- Title: Model Evaluation for Domain Identification of Unknown Classes in
Open-World Recognition: A Proposal
- Authors: Gusti Ahmad Fanshuri Alfarisy, Owais Ahmed Malik, Ong Wee Hong
- Abstract summary: Open-World Recognition (OWR) is an emerging field that makes a machine learning model competent in rejecting the unknowns.
In this study, we propose an evaluation protocol for estimating a model's capability in separating unknown in-domain (ID) and unknown out-of-domain (OOD)
We experimented with five different domains: garbage, food, dogs, plants, and birds.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Open-World Recognition (OWR) is an emerging field that makes a machine
learning model competent in rejecting the unknowns, managing them, and
incrementally adding novel samples to the base knowledge. However, this broad
objective is not practical for an agent that works on a specific task. Not all
rejected samples will be used for learning continually in the future. Some
novel images in the open environment may not belong to the domain of interest.
Hence, identifying the unknown in the domain of interest is essential for a
machine learning model to learn merely the important samples. In this study, we
propose an evaluation protocol for estimating a model's capability in
separating unknown in-domain (ID) and unknown out-of-domain (OOD). We evaluated
using three approaches with an unknown domain and demonstrated the possibility
of identifying the domain of interest using the pre-trained parameters through
traditional transfer learning, Automated Machine Learning (AutoML), and Nearest
Class Mean (NCM) classifier with First Integer Neighbor Clustering Hierarchy
(FINCH). We experimented with five different domains: garbage, food, dogs,
plants, and birds. The results show that all approaches can be used as an
initial baseline yielding a good accuracy. In addition, a Balanced Accuracy
(BACCU) score from a pre-trained model indicates a tendency to excel in one or
more domains of interest. We observed that MobileNetV3 yielded the highest
BACCU score for the garbage domain and surpassed complex models such as the
transformer network. Meanwhile, our results also suggest that a strong
representation in the pre-trained model is important for identifying unknown
classes in the same domain. This study could open the bridge toward open-world
recognition in domain-specific tasks where the relevancy of the unknown classes
is vital.
Related papers
- Self-Guided Masked Autoencoders for Domain-Agnostic Self-Supervised
Learning [58.93724285214628]
We present Self-guided Masked Autoencoders (SMA), a fully domain-agnostic masked modeling method.
SMA trains an attention based model using a masked modeling objective, by learning masks to sample without any domain-specific assumptions.
We evaluate SMA on three self-supervised learning benchmarks in protein biology, chemical property prediction, and particle physics.
arXiv Detail & Related papers (2024-02-22T18:46:22Z) - Activate and Reject: Towards Safe Domain Generalization under Category
Shift [71.95548187205736]
We study a practical problem of Domain Generalization under Category Shift (DGCS)
It aims to simultaneously detect unknown-class samples and classify known-class samples in the target domains.
Compared to prior DG works, we face two new challenges: 1) how to learn the concept of unknown'' during training with only source known-class samples, and 2) how to adapt the source-trained model to unseen environments.
arXiv Detail & Related papers (2023-10-07T07:53:12Z) - Self-Paced Learning for Open-Set Domain Adaptation [50.620824701934]
Traditional domain adaptation methods presume that the classes in the source and target domains are identical.
Open-set domain adaptation (OSDA) addresses this limitation by allowing previously unseen classes in the target domain.
We propose a novel framework based on self-paced learning to distinguish common and unknown class samples.
arXiv Detail & Related papers (2023-03-10T14:11:09Z) - Improving Domain Generalization with Domain Relations [77.63345406973097]
This paper focuses on domain shifts, which occur when the model is applied to new domains that are different from the ones it was trained on.
We propose a new approach called D$3$G to learn domain-specific models.
Our results show that D$3$G consistently outperforms state-of-the-art methods.
arXiv Detail & Related papers (2023-02-06T08:11:16Z) - Few-Shot Classification in Unseen Domains by Episodic Meta-Learning
Across Visual Domains [36.98387822136687]
Few-shot classification aims to carry out classification given only few labeled examples for the categories of interest.
In this paper, we present a unique learning framework for domain-generalized few-shot classification.
By advancing meta-learning strategies, our learning framework exploits data across multiple source domains to capture domain-invariant features.
arXiv Detail & Related papers (2021-12-27T06:54:11Z) - Inferring Latent Domains for Unsupervised Deep Domain Adaptation [54.963823285456925]
Unsupervised Domain Adaptation (UDA) refers to the problem of learning a model in a target domain where labeled data are not available.
This paper introduces a novel deep architecture which addresses the problem of UDA by automatically discovering latent domains in visual datasets.
We evaluate our approach on publicly available benchmarks, showing that it outperforms state-of-the-art domain adaptation methods.
arXiv Detail & Related papers (2021-03-25T14:33:33Z) - TraND: Transferable Neighborhood Discovery for Unsupervised Cross-domain
Gait Recognition [77.77786072373942]
This paper proposes a Transferable Neighborhood Discovery (TraND) framework to bridge the domain gap for unsupervised cross-domain gait recognition.
We design an end-to-end trainable approach to automatically discover the confident neighborhoods of unlabeled samples in the latent space.
Our method achieves state-of-the-art results on two public datasets, i.e., CASIA-B and OU-LP.
arXiv Detail & Related papers (2021-02-09T03:07:07Z)
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.