首页 /研究 /Domain Adaptation with Contrastive Simultaneous Multi-Loss Training for Hand Gesture Recognition
HRI

Domain Adaptation with Contrastive Simultaneous Multi-Loss Training for Hand Gesture Recognition

Joel Baptista, Vítor Santos, Filipe Silva, Diogo Pinho

发表年份
2023
引用次数
13
访问权限
开放获取

摘要

Hand gesture recognition from images is a critical task with various real-world applications, particularly in the field of human-robot interaction. Industrial environments, where non-verbal communication is preferred, are significant areas of application for gesture recognition. However, these environments are often unstructured and noisy, with complex and dynamic backgrounds, making accurate hand segmentation a challenging task. Currently, most solutions employ heavy preprocessing to segment the hand, followed by the application of deep learning models to classify the gestures. To address this challenge and develop a more robust and generalizable classification model, we propose a new form of domain adaptation using multi-loss training and contrastive learning. Our approach is particularly relevant in industrial collaborative scenarios, where hand segmentation is difficult and context-dependent. In this paper, we present an innovative solution that further challenges the existing approach by testing the model on an entirely unrelated dataset with different users. We use a dataset for training and validation and demonstrate that contrastive learning techniques in simultaneous multi-loss functions provide superior performance in hand gesture recognition compared to conventional approaches in similar conditions.

关键词

GestureComputer scienceGesture recognitionPreprocessorArtificial intelligenceTask (project management)SegmentationContext (archaeology)Adaptation (eye)Domain (mathematical analysis)

相关论文

查看 HRI 分类全部论文