|国家预印本平台
首页|Boosting Open Set Recognition Performance through Modulated Representation Learning

Boosting Open Set Recognition Performance through Modulated Representation Learning

Boosting Open Set Recognition Performance through Modulated Representation Learning

来源:Arxiv_logoArxiv
英文摘要

The open set recognition (OSR) problem aims to identify test samples from novel semantic classes that are not part of the training classes, a task that is crucial in many practical scenarios. However, existing OSR methods use a constant scaling factor (the temperature) to the logits before applying a loss function, which hinders the model from exploring both ends of the spectrum in representation learning -- from instance-level to semantic-level features. In this paper, we address this problem by enabling temperature-modulated representation learning using our novel negative cosine scheduling scheme. Our scheduling lets the model form a coarse decision boundary at the beginning of training by focusing on fewer neighbors, and gradually prioritizes more neighbors to smooth out rough edges. This gradual task switching leads to a richer and more generalizable representation space. While other OSR methods benefit by including regularization or auxiliary negative samples, such as with mix-up, thereby adding a significant computational overhead, our scheme can be folded into any existing OSR method with no overhead. We implement the proposed scheme on top of a number of baselines, using both cross-entropy and contrastive loss functions as well as a few other OSR methods, and find that our scheme boosts both the OSR performance and the closed set performance in most cases, especially on the tougher semantic shift benchmarks.

Amit Kumar Kundu、Vaishnavi Patil、Joseph Jaja

计算技术、计算机技术

Amit Kumar Kundu,Vaishnavi Patil,Joseph Jaja.Boosting Open Set Recognition Performance through Modulated Representation Learning[EB/OL].(2025-05-23)[2025-06-12].https://arxiv.org/abs/2505.18137.点此复制

评论