TL;DR
This paper introduces SGPS, a novel framework for deep metric learning that effectively utilizes noisy labels by constructing reliable positive pairs, significantly improving robustness and performance in noisy data scenarios.
Contribution
The paper proposes a subgroup-based positive-pair selection framework that enhances sample utilization in noisy label deep metric learning, outperforming existing methods.
Findings
SGPS outperforms state-of-the-art noisy label DML methods.
Effective identification of clean and noisy samples improves learning.
Utilizing subgroup information enhances positive pair construction.
Abstract
The existence of noisy labels in real-world data negatively impacts the performance of deep learning models. Although much research effort has been devoted to improving the robustness towards noisy labels in classification tasks, the problem of noisy labels in deep metric learning (DML) remains under-explored. Existing noisy label learning methods designed for DML mainly discard suspicious noisy samples, resulting in a waste of the training data. To address this issue, we propose a noise-robust DML framework with SubGroup-based Positive-pair Selection (SGPS), which constructs reliable positive pairs for noisy samples to enhance the sample utilization. Specifically, SGPS first effectively identifies clean and noisy samples by a probability-based clean sample selectionstrategy. To further utilize the remaining noisy samples, we discover their potential similar samples based on the…
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