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Continuous Learning without Forgetting for Person Re-Identification
2019
2019 16th IEEE International Conference on Advanced Video and Signal Based Surveillance (AVSS)
Deep learning-based person re-identification faces a scalability challenge when the target domain requires continuous learning. Service environments, such as airports, need to recognize new visitors and add new cameras over time. Training-at-once is not enough to make the model robust to new tasks and domain variations. A well-known approach is fine-tuning, which suffers forgetting problem on old tasks when learning new tasks. Joint-training can alleviate the problem but requires old datasets,
doi:10.1109/avss.2019.8909828
dblp:conf/avss/SugiantoTSCY19
fatcat:pyxiq4wudjecbak3gxdut6pnhu