TL;DR
This paper introduces a novel open-set video domain adaptation method that models entropy distributions with extreme value theory to improve recognition of unknown classes and align shared classes across domains.
Contribution
It proposes a class-conditional extreme value theory approach to better recognize unknown classes and mitigate negative transfer in open-set video domain adaptation.
Findings
Achieved state-of-the-art performance on multiple datasets.
Effectively separates unknown samples using entropy distribution modeling.
Improves alignment of shared classes while recognizing unknowns.
Abstract
With the advent of media streaming, video action recognition has become progressively important for various applications, yet at the high expense of requiring large-scale data labelling. To overcome the problem of expensive data labelling, domain adaptation techniques have been proposed that transfers knowledge from fully labelled data (i.e., source domain) to unlabelled data (i.e., target domain). The majority of video domain adaptation algorithms are proposed for closed-set scenarios in which all the classes are shared among the domains. In this work, we propose an open-set video domain adaptation approach to mitigate the domain discrepancy between the source and target data, allowing the target data to contain additional classes that do not belong to the source domain. Different from previous works, which only focus on improving accuracy for shared classes, we aim to jointly enhance…
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