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Implicit Non-Causal Factors are Out via Dataset Splitting for Domain Generalization Object Detection

  • Zhilong ZHANG
  • , Lei ZHANG*
  • , Qing HE
  • , Shuyin XIA
  • , Guoyin WANG
  • , Fuxiang HUANG
  • *Corresponding author for this work

Research output: Journal PublicationsJournal Article (refereed)peer-review

Abstract

Open world object detection faces a significant challenge in domain-invariant representation, i.e., implicit non-causal factors. Most domain generalization (DG) methods based on domain adversarial learning (DAL) pay much attention to learn domain-invariant information, but often overlook the potential non-causal factors. We unveil two critical causes: 1) The domain discriminator-based DAL method is subject to the extremely sparse domain label, i.e., assigning only one domain label to each dataset, thus can only associate explicit non-causal factor, which is incredibly limited. 2) The non-causal factors, induced by unidentified data bias, are excessively implicit and cannot be solely discerned by conventional DAL paradigm. Based on these key findings, inspired by the Granular-Ball perspective, we propose an improved DAL method, i.e., GB-DAL. The proposed GB-DAL utilizes Prototype-based Granular Ball Splitting (PGBS) module to generate more dense domains from limited datasets, akin to more fine-grained granular balls, indicating more potential non-causal factors. Inspired by adversarial perturbations akin to non-causal factors, we propose a Simulated Non-causal Factors (SNF) module as a means of data augmentation to reduce the implicitness of non-causal factors, and facilitate the training of GB-DAL. Comparative experiments on numerous benchmarks demonstrate that our method achieves better generalization performance in novel circumstances.

Original languageEnglish
Article number173
JournalInternational Journal of Computer Vision
Volume134
Issue number4
DOIs
Publication statusPublished - Apr 2026

Bibliographical note

Publisher Copyright:
© The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature 2026.

Funding

This work was partially supported by National Natural Science Fund of China under Grants 92570110, 62271090 and 62221005, Chongqing Natural Science Fund under Grant CSTB2024NSCQ-JQX0038, National Key R&D Program of China under Grant 2021YFB3100800 and National Youth Talent Project.

Keywords

  • Domain adversarial learning
  • Domain generalization
  • Granular-Ball split
  • Non-causal factors
  • Object detection

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