Unsupervised Re-identification architecture based on segmented tracklets for animal behavior analysis

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Natalia P. Volkova
Maksym A. Shvandt

Abstract

In this paper, we present Mask-TAUDL, an advanced unsupervised re-identification architecture that combines instance segmentation, unsupervised deep learning, and tracklet association for detailed analysis of object behavior in long-term recordings. It combines the Mask R-CNN dual-stream detector/segmenter with dual ResNet-18 backbones and the unsupervised deep learning module based on tracklet association (TAUDL). Mask R-CNN provides accurate object localization and binary masks from which we construct tracklets with improved segmentation. The two ResNet-18 streams use these masks to extract appearance and motion-sensitive features at the tracklet level, which are combined into a common feature descriptor. The TAUDL module operates directly on the masked tracklet features and co-trains discriminative embeddings and cross-session associations without manual labeling. The proposed Mask-TAUDL architecture trains a model so that features of a single individual remain close in embedding space over time, while providing a clear separation of features between different individuals. Integrating pure masked regions with temporally aggregated features helps suppress spurious variations caused by shadows, reflections, or overlapping objects. Long-term animal re-identification is challenging due to frequent overlaps, appearance drift, and subtle visual differences between individuals, and most existing solutions rely on large annotated datasets, which limits their applicability in real-world laboratory settings. The Mask-TAUDL architecture overcomes these limitations by explicitly modeling temporally consistent, mask-refined tracks and training embeddings that preserve identity in a fully unsupervised manner. Mask-TAUDL is designed for animal behavior studies, namely small laboratory species such as mice and fish observed in closed or semi-structured arenas, where reliable long-term identity tracking is essential for quantitative behavioral analysis, longitudinal experiments, and high-throughput screening.

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Theoretical aspects of computer science, programming and data analysis

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Author Biographies

Natalia P. Volkova, Odesa Polytechnic National University, 1, Shevchenko Ave. Odesa, 65044, Ukraine

PhD, Associate Professor, Chief of the Department of Applied Mathematics and Information Technologies

Scopus Author ID: 36104775700

Maksym A. Shvandt, Odesa Polytechnic National University, 1, Shevchenko Ave. Odesa, 65044, Ukraine

PhD Student, Department of Applied Mathematics and Information Technologies

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