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Main Authors: Sun, Qiyue, Huang, Qiming, Yang, Yang, Wang, Hongjun, Jiao, Jianbo
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.21770
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author Sun, Qiyue
Huang, Qiming
Yang, Yang
Wang, Hongjun
Jiao, Jianbo
author_facet Sun, Qiyue
Huang, Qiming
Yang, Yang
Wang, Hongjun
Jiao, Jianbo
contents Humans usually show exceptional generalisation and discovery ability in the open world, when being shown uncommon new concepts. Whereas most existing studies in the literature focus on common typical data from closed sets, open-world novel discovery is under-explored in videos. In this paper, we are interested in asking: What if atypical unusual videos are exposed in the learning process? To this end, we collect a new video dataset consisting of various types of unusual atypical data (e.g., sci-fi, animation, etc.). To study how such atypical data may benefit open-world learning, we feed them into the model training process for representation learning. Focusing on three key tasks in open-world learning: out-of-distribution (OOD) detection, novel category discovery (NCD), and zero-shot action recognition (ZSAR), we found that even straightforward learning approaches with atypical data consistently improve performance across various settings. Furthermore, we found that increasing the categorical diversity of the atypical samples further boosts OOD detection performance. Additionally, in the NCD task, using a smaller yet more semantically diverse set of atypical samples leads to better performance compared to using a larger but more typical dataset. In the ZSAR setting, the semantic diversity of atypical videos helps the model generalise better to unseen action classes. These observations in our extensive experimental evaluations reveal the benefits of atypical videos for visual representation learning in the open world, together with the newly proposed dataset, encouraging further studies in this direction. The project page is at: https://julysun98.github.io/atypical_dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2508_21770
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle What Can We Learn from Harry Potter? An Exploratory Study of Visual Representation Learning from Atypical Videos
Sun, Qiyue
Huang, Qiming
Yang, Yang
Wang, Hongjun
Jiao, Jianbo
Computer Vision and Pattern Recognition
Humans usually show exceptional generalisation and discovery ability in the open world, when being shown uncommon new concepts. Whereas most existing studies in the literature focus on common typical data from closed sets, open-world novel discovery is under-explored in videos. In this paper, we are interested in asking: What if atypical unusual videos are exposed in the learning process? To this end, we collect a new video dataset consisting of various types of unusual atypical data (e.g., sci-fi, animation, etc.). To study how such atypical data may benefit open-world learning, we feed them into the model training process for representation learning. Focusing on three key tasks in open-world learning: out-of-distribution (OOD) detection, novel category discovery (NCD), and zero-shot action recognition (ZSAR), we found that even straightforward learning approaches with atypical data consistently improve performance across various settings. Furthermore, we found that increasing the categorical diversity of the atypical samples further boosts OOD detection performance. Additionally, in the NCD task, using a smaller yet more semantically diverse set of atypical samples leads to better performance compared to using a larger but more typical dataset. In the ZSAR setting, the semantic diversity of atypical videos helps the model generalise better to unseen action classes. These observations in our extensive experimental evaluations reveal the benefits of atypical videos for visual representation learning in the open world, together with the newly proposed dataset, encouraging further studies in this direction. The project page is at: https://julysun98.github.io/atypical_dataset.
title What Can We Learn from Harry Potter? An Exploratory Study of Visual Representation Learning from Atypical Videos
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.21770