Bi-C2R: Bidirectional Continual Compatible Representation for Re-indexing Free Lifelong Person Re-identification
Zhenyu Cui, Jiahuan Zhou, Yuxin Peng

TL;DR
This paper introduces a new lifelong person re-identification task that avoids re-indexing historical data, proposing a bidirectional compatible representation method to ensure feature compatibility across model updates.
Contribution
The paper proposes the Bi-C2R framework for re-index free lifelong person Re-ID, enabling continuous model updates without re-indexing historical gallery images.
Findings
Achieves leading performance on RFL-ReID and L-ReID benchmarks.
Theoretically analyzes the compatibility of features across model updates.
Demonstrates effectiveness in avoiding re-indexing costs and maintaining accuracy.
Abstract
Lifelong person Re-IDentification (L-ReID) exploits sequentially collected data to continuously train and update a ReID model, focusing on the overall performance of all data. Its main challenge is to avoid the catastrophic forgetting problem of old knowledge while training on new data. Existing L-ReID methods typically re-extract new features for all historical gallery images for inference after each update, known as "re-indexing". However, historical gallery data typically suffers from direct saving due to the data privacy issue and the high re-indexing costs for large-scale gallery images. As a result, it inevitably leads to incompatible retrieval between query features extracted by the updated model and gallery features extracted by those before the update, greatly impairing the re-identification performance. To tackle the above issue, this paper focuses on a new task called…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Face recognition and analysis · Gait Recognition and Analysis
