Original paper
Group-Group Loss-Based Global-Regional Feature Learning for Vehicle Re-Identification
Abstract
Vehicle Re-Identification (Re-ID) is challenging because vehicles of the same model commonly show similar appearance. We tackle this challenge by proposing a Global-Regional Feature (GRF) that depicts extra local details to enhance discrimination power in addition to the global context. It is motivated by the observation that, vehicles of same color, maker, and model can be distinguished by their regional difference, e.g., the decorations on the...
Paper Details
Title
Group-Group Loss-Based Global-Regional Feature Learning for Vehicle Re-Identification
Published Date
Jan 1, 2020
Volume
29
Pages
2638 - 2652
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