machinelearning apple 10月16日 22:10
CPEP框架提升手势识别性能
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本文提出了一种名为CPEP的对比姿态肌电图预训练框架,用于提升手势识别的准确率,尤其在未见过的情况下的表现显著,通过对比实验证明,模型在分布内和分布外的手势分类任务中均优于基准模型。

This paper was accepted at the Foundation Models for the Brain and Body Workshop at NeurIPS 2025.

Hand gesture classification using high-quality structured data such as videos, images, and hand skeletons is a well-explored problem in computer vision. Leveraging low-power, cost-effective biosignals, e.g. surface electromyography (sEMG), allows for continuous gesture prediction on wearables. In this paper, we demonstrate that learning representations from weak-modality data that are aligned with those from structured, high-quality data can improve representation quality and enables zero-shot classification. Specifically, we propose a Contrastive Pose-EMG Pre-training (CPEP) framework to align EMG and pose representations, where we learn an EMG encoder that produces high-quality and pose-informative representations. We assess the gesture classification performance of our model through linear probing and zero-shot setups. Our model outperforms emg2pose benchmark models by up to 21% on in-distribution gesture classification and 72% on unseen (out-of-distribution) gesture classification.

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相关标签

手势识别 肌电图 预训练框架 CPEP 零样本分类
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