Product Description
Towards Open-World Person Re-Identification by
One-Shot Group-based Verification
Abstract— Towards Open-World Person Re-Identification by One-Shot Group-based Verification. Solving the problem of matching people across non-overlapping multi-camera views, known as person re-identification (re-id), has received increasing interests in computer vision. In a real-world application scenario, a watch-list < gallery set > of a handful of known target people are provided with very few (in many cases only a single) image(s) (shots) per target. Existing re-id methods are largely unsuitable to address this open-world re-id challenge because they are designed for (1) a closed-world scenario where the gallery and probe sets are assumed to contain exactly the same people, (2) person-wise identification whereby the model attempts to verify exhaustively against each individual in the gallery set, and (3) < Final Year Projects 2016 > learning a matching model using multi-shots. In this paper, a novel transfer local relative distance comparison (t-LRDC) model is formulated to address the open-world person re-identification problem by one-shot group-based verification. The model is designed to mine and transfer useful information from a labelled open-world non-target dataset. Extensive experiments demonstrate that the proposed approach outperforms both non-transfer learning and existing transfer learning based re-id methods.
Including Packages
Our Specialization
Support Service
Statistical Report
satisfied customers
3,589Freelance projects
983sales on Site
11,021developers
175+
There are no reviews yet