Understanding the Cross-Domain Capabilities of Video-Based Few-Shot Action Recognition Models
Georgia Markham, Mehala Balamurali, Andrew J. Hill

TL;DR
This paper systematically evaluates how existing few-shot action recognition models perform across different domains, revealing that simple transfer learning often outperforms specialized models as domain differences grow, and highlighting the need for more generalizable techniques.
Contribution
First comprehensive analysis of cross-domain few-shot action recognition models, providing insights into their strengths and limitations across varying domain shifts.
Findings
Transfer learning outperforms other methods as domain difference increases.
Specialized cross-domain models perform poorly under high domain shift.
Temporal alignment techniques do not generalize well to unseen domains.
Abstract
Few-shot action recognition (FSAR) aims to learn a model capable of identifying novel actions in videos using only a few examples. In assuming the base dataset seen during meta-training and novel dataset used for evaluation can come from different domains, cross-domain few-shot learning alleviates data collection and annotation costs required by methods with greater supervision and conventional (single-domain) few-shot methods. While this form of learning has been extensively studied for image classification, studies in cross-domain FSAR (CD-FSAR) are limited to proposing a model, rather than first understanding the cross-domain capabilities of existing models. To this end, we systematically evaluate existing state-of-the-art single-domain, transfer-based, and cross-domain FSAR methods on new cross-domain tasks with increasing difficulty, measured based on the domain shift between the…
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Taxonomy
TopicsHuman Pose and Action Recognition · Anomaly Detection Techniques and Applications · Gait Recognition and Analysis
MethodsBalanced Selection
