TL;DR
This paper introduces a novel cross-camera feature prediction approach for person re-identification across distant scenes, leveraging intra-camera labels and self-supervision to handle unpaired data in large-scale surveillance.
Contribution
It proposes a cross-camera feature prediction method with global-local feature learning to improve camera-invariant person re-identification using unpaired data.
Findings
Achieves 15.4% Rank-1 improvement on Market-SCT dataset.
Gains 22.3% mAP improvement over previous methods.
Demonstrates effectiveness in large-scale, distant scene scenarios.
Abstract
Person re-identification (Re-ID) aims to match person images across non-overlapping camera views. The majority of Re-ID methods focus on small-scale surveillance systems in which each pedestrian is captured in different camera views of adjacent scenes. However, in large-scale surveillance systems that cover larger areas, it is required to track a pedestrian of interest across distant scenes (e.g., a criminal suspect escapes from one city to another). Since most pedestrians appear in limited local areas, it is difficult to collect training data with cross-camera pairs of the same person. In this work, we study intra-camera supervised person re-identification across distant scenes (ICS-DS Re-ID), which uses cross-camera unpaired data with intra-camera identity labels for training. It is challenging as cross-camera paired data plays a crucial role for learning camera-invariant features in…
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