RatSeizure: A Benchmark and Saliency-Context Transformer for Rat Seizure Localization

arXiv cs.CV / 3/31/2026

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Key Points

  • The paper introduces RatSeizure, described as the first publicly available benchmark dataset for fine-grained rat seizure behavior analysis with precise temporal annotations and standardized evaluation protocols.
  • RatSeizure includes recorded clips annotated with seizure-related action units as well as temporal boundaries, supporting both behavior classification and temporal localization tasks.
  • The authors propose RaSeformer, a saliency-context Transformer designed to emphasize seizure-relevant context while suppressing redundant cues for temporal action localization.
  • Experiments on the RatSeizure benchmark reportedly show strong performance, along with a competitive reference model to help researchers benchmark and compare methods.
  • The work also defines standardized dataset splits and evaluation procedures intended to improve reproducibility across studies.

Abstract

Animal models, particularly rats, play a critical role in seizure research for studying epileptogenesis and treatment response. However, progress is limited by the lack of datasets with precise temporal annotations and standardized evaluation protocols. Existing animal behavior datasets often have limited accessibility, coarse labeling, and insufficient temporal localization of clinically meaningful events. To address these limitations, we introduce RatSeizure, the first publicly benchmark for fine-grained seizure behavior analysis. The dataset consists of recorded clips annotated with seizure-related action units and temporal boundaries, enabling both behavior classification and temporal localization. We further propose RaSeformer, a saliency-context Transformer for temporal action localization that highlights behavior-relevant context while suppressing redundant cues. Experiments on RatSeizure show that RaSeformer achieves strong performance and provides a competitive reference model for this challenging task. We also establish standardized dataset splits and evaluation protocols to support reproducible benchmarking.