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Main Authors: Antequera-Sánchez, Ignacio, Suárez-Díaz, Juan Luis, Montes, Rosana, Herrera, Francisco
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.18739
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author Antequera-Sánchez, Ignacio
Suárez-Díaz, Juan Luis
Montes, Rosana
Herrera, Francisco
author_facet Antequera-Sánchez, Ignacio
Suárez-Díaz, Juan Luis
Montes, Rosana
Herrera, Francisco
contents Out-of-distribution (OOD) detection is a fundamental requirement for the reliable deployment of artificial intelligence applications in open-world environments. However, addressing the heterogeneous nature of OOD data, ranging from low-level corruption to semantic shifts, remains a complex challenge that single-stage detectors often fail to resolve. To address this issue, we propose SeNeDiF-OOD, a novel methodology based on Semantic Nested Dichotomy Fusion. This framework decomposes the detection task into a hierarchical structure of binary fusion nodes, where each layer is designed to integrate decision boundaries aligned with specific levels of semantic abstraction. To validate the proposed framework, we present a comprehensive case study using MonuMAI, a real-world architectural style recognition system exposed to an open environment. This application faces a diverse range of inputs, including non-monument images, unknown architectural styles, and adversarial attacks, making it an ideal testbed for our proposal. Through extensive experimental evaluation in this domain, results demonstrate that our hierarchical fusion methodology significantly outperforms traditional baselines, effectively filtering these diverse OOD categories while preserving in-distribution performance.
format Preprint
id arxiv_https___arxiv_org_abs_2601_18739
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle SeNeDiF-OOD: Semantic Nested Dichotomy Fusion for Out-of-Distribution Detection Methodology in Open-World Classification. A Case Study on Monument Style Classification
Antequera-Sánchez, Ignacio
Suárez-Díaz, Juan Luis
Montes, Rosana
Herrera, Francisco
Computer Vision and Pattern Recognition
Artificial Intelligence
I.2.0
Out-of-distribution (OOD) detection is a fundamental requirement for the reliable deployment of artificial intelligence applications in open-world environments. However, addressing the heterogeneous nature of OOD data, ranging from low-level corruption to semantic shifts, remains a complex challenge that single-stage detectors often fail to resolve. To address this issue, we propose SeNeDiF-OOD, a novel methodology based on Semantic Nested Dichotomy Fusion. This framework decomposes the detection task into a hierarchical structure of binary fusion nodes, where each layer is designed to integrate decision boundaries aligned with specific levels of semantic abstraction. To validate the proposed framework, we present a comprehensive case study using MonuMAI, a real-world architectural style recognition system exposed to an open environment. This application faces a diverse range of inputs, including non-monument images, unknown architectural styles, and adversarial attacks, making it an ideal testbed for our proposal. Through extensive experimental evaluation in this domain, results demonstrate that our hierarchical fusion methodology significantly outperforms traditional baselines, effectively filtering these diverse OOD categories while preserving in-distribution performance.
title SeNeDiF-OOD: Semantic Nested Dichotomy Fusion for Out-of-Distribution Detection Methodology in Open-World Classification. A Case Study on Monument Style Classification
topic Computer Vision and Pattern Recognition
Artificial Intelligence
I.2.0
url https://arxiv.org/abs/2601.18739