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In many applications, we are constrained to learn classifiers from very limited data (few-shot classification). The task becomes even more challenging if it is also required to identify samples from unknown categories (open-set classification). Learning a good abstraction for a class with very few samples is extremely difficult, especially under open-set settings. As a result, open-set recognition has received limited attention in the few-shot setting. However, it is a critical task in many applications like environmental monitoring, where the number of labeled examples for each class is limited. Existing few-shot open-set recognition (FSOSR) methods rely on thresholding schemes, with some considering uniform probability for open-class samples. However, this approach is often inaccurate, especially for fine-grained categorization, and makes them highly sensitive to the choice of a threshold. To address these concerns, we propose Reconstructing Exemplar-based Few-shot Open-set ClaSsifier (ReFOCS). By using a novel exemplar reconstruction-based meta-learning strategy ReFOCS streamlines FSOSR eliminating the need for a carefully tuned threshold by learning to be self-aware of the openness of a sample. The exemplars, act as class representatives and can be either provided in the training dataset or estimated in the feature domain. By testing on a wide variety of datasets, we show ReFOCS to outperform multiple state-of-the-art methods.
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http://dx.doi.org/10.1109/TPAMI.2023.3320731 | DOI Listing |
Front Plant Sci
August 2025
Department of Electronic Engineering, Jeonbuk National University, Jeonju, Jeollabuk-do, Republic of Korea.
Plant diseases pose a significant threat to agriculture, impacting food security and public health. Most existing plant disease recognition methods operate within closed-set settings, where disease categories are fixed during training, making them ineffective against novel diseases. This study extends plant disease recognition to an open-set scenario, enabling the identification of both known and unknown classes for real-world applicability.
View Article and Find Full Text PDFIEEE Trans Image Process
August 2025
Due to the lack of prior knowledge about unknown classes during training, existing methods for cross-domain open-set image recognition typically rely on threshold-based solutions. However, such approaches often struggle to capture the complex boundary relationships between known and unknown classes, which can lead to negative transfer effects caused by feature confusion between the two. To address this issue, this paper proposes a graph isomorphic distillation diffusion model (GIDDM) that aims to learn the boundary relationships between known and unknown classes from a closed-set classifier that models predictive uncertainty.
View Article and Find Full Text PDFJ Acoust Soc Am
August 2025
Department of Speech-Language-Hearing Sciences and Center for Neurobehavioral Development, University of Minnesota, Minneapolis, USA.
This study aimed to investigate open-set sentence recognition in quiet and amidst single-talker babble among Mandarin-speaking children with cochlear implants (CIs) to elucidate key contributing cognitive and linguistic factors influencing performance. Open-set sentence recognition was assessed in both conditions, alongside measurement of cognitive skills (operational efficiency and auditory short-term memory) and linguistic skills (oral vocabulary and syntactic competence) in kindergarten-aged children with CIs (n = 22; age = 59.8 ± 10.
View Article and Find Full Text PDFIEEE Trans Image Process
January 2025
Open-set recognition (OSR) aims to accurately classify known categories while effectively rejecting unknown negative samples. Existing methods for OSR in hyperspectral images (HSI) can be generally divided into two categories: reconstruction-based and distance-based methods. Reconstruction-based approaches focus on analyzing reconstruction errors during inference, whereas distance-based methods determine the rejection of unknown samples by measuring their distance to each prototype.
View Article and Find Full Text PDFSci Rep
July 2025
Key Laboratory of Computational Intelligence and Chinese Information Processing of Ministry of Education, School of Computer and Information Technology, Shanxi University, Taiyuan, 030006, Shanxi, China.
The central obstacle in Open Set Recognition (OSR) is striking a balance between minimizing classification errors on known data and managing the risks posed by open space for unknown data. To address these issues, we present three novel frameworks: the Positive-Negative Prototypes Fusion Framework (PNPFF), its adversarial extension (APNPFF), and an enhanced version, APNPFF++. The PNPFF framework incorporates multiple positive prototypes to capture intra-class variability and a single negative prototype to strengthen intra-class compactness and inter-class separation.
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