2021
DOI: 10.48550/arxiv.2101.00317
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Identity-aware Facial Expression Recognition in Compressed Video

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“…Compared with over one million images of the ImageNet dataset, the collection of large-scale medical data is challenging for clinical applications (Liu et al 2020b(Liu et al , 2018dHe et al 2020a). To counter this, UDA has gradually become popular (Zou et al 2019;Liu et al 2020cLiu et al , 2021b, which aims to match covariate shift (i.e., only p(x) shift). Discrepancy-based methods (Long et al 2015), such as minimizing MMD, address the dataset shift by mitigating specific discrepancies defined on different layers of a shared model between domains.…”
Section: Related Workmentioning
confidence: 99%
“…Compared with over one million images of the ImageNet dataset, the collection of large-scale medical data is challenging for clinical applications (Liu et al 2020b(Liu et al , 2018dHe et al 2020a). To counter this, UDA has gradually become popular (Zou et al 2019;Liu et al 2020cLiu et al , 2021b, which aims to match covariate shift (i.e., only p(x) shift). Discrepancy-based methods (Long et al 2015), such as minimizing MMD, address the dataset shift by mitigating specific discrepancies defined on different layers of a shared model between domains.…”
Section: Related Workmentioning
confidence: 99%