Bridging Data Trials and Task Barriers: A Unified Framework for Sketch Biometric Identification
Decheng Liu, Bin Hu, Xinbo Gao, Dawei Zhou, Chunlei Peng, Nannan Wang, Ruimin Hu

TL;DR
This paper introduces a unified framework for sketch biometric identification that combines synthetic data generation and continual learning to improve cross-task and cross-modality recognition, supported by a new large-scale benchmark.
Contribution
It proposes a novel unified framework integrating synthetic sketch data generation and task-sequential continual learning for sketch biometric identification.
Findings
Generated large-scale high-quality synthetic sketch data.
Achieved effective incremental learning across multiple sketch recognition tasks.
Established a new benchmark dataset for evaluation.
Abstract
Different from existing cross-modality identification tasks (e.g., heterogeneous face recognition, sketch re-identification, etc.), we introduce a novel yet practical setting for these related identification tasks, named \textbf{sketch biometric identification}, which aims to continually train a unified model across different data domains, even diverse identification tasks. Sketch biometric identification faces challenges, including scarce real sketch data, high annotation costs, privacy risks, and insufficient generalization ability of cross-task models. Existing methods usually rely on limited real data or single-task optimization, making it difficult to effectively address the joint challenges of cross-modality and cross-task. This paper proposes a unified framework that integrates efficient synthetic sketch generation and task-sequential continual learning. First, we design an…
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