DMSD-CDFSAR: Distillation from Mixed-Source Domain for Cross-Domain Few-shot Action Recognition
Fei Guo, YiKang Wang, Han Qi, Li Zhu, Jing Sun

TL;DR
This paper introduces a novel cross-domain few-shot action recognition method that leverages mixed-source domain distillation, integrating labeled source and unlabeled target data to improve generalization across domains.
Contribution
It proposes a new distillation approach from mixed-source domains, combining labeled and unlabeled data during training for better cross-domain generalization in few-shot action recognition.
Findings
Enhanced model generalization across domains.
Effective use of unlabeled target data during training.
Improved classification accuracy in cross-domain scenarios.
Abstract
Few-shot action recognition is an emerging field in computer vision, primarily focused on meta-learning within the same domain. However, challenges arise in real-world scenario deployment, as gathering extensive labeled data within a specific domain is laborious and time-intensive. Thus, attention shifts towards cross-domain few-shot action recognition, requiring the model to generalize across domains with significant deviations. Therefore, we propose a novel approach, ``Distillation from Mixed-Source Domain", tailored to address this conundrum. Our method strategically integrates insights from both labeled data of the source domain and unlabeled data of the target domain during the training. The ResNet18 is used as the backbone to extract spatial features from the source and target domains. We design two branches for meta-training: the original-source and the mixed-source branches. In…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Advanced Optical Sensing Technologies · Human Pose and Action Recognition
MethodsSoftmax · Attention Is All You Need
