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首页> 外文期刊>IEEE Transactions on Biometrics, Behavior, and Identity Science >Crossing Domains for AU Coding: Perspectives, Approaches, and Measures
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Crossing Domains for AU Coding: Perspectives, Approaches, and Measures

机译:AU编码的交叉域名:观点,方法和措施

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摘要

Facial action unit (AU) detectors have performed well when trained and tested within the same domain. How well do AU detectors transfer to domains in which they have not been trained? We review literature on cross-domain transfer and conduct experiments to address limitations of prior research. We evaluate generalizability in four publicly available databases. EB+ (an expanded version of BP4D+), Sayette GFT, DISFA and UNBC Shoulder Pain (SP). The databases differ in observational scenarios, context, participant diversity, range of head pose, video resolution, and AU base rates. In most cases performance decreased with change in domain, often to below the threshold needed for behavioral research. However, exceptions were noted. Deep and shallow approaches generally performed similarly and average results were slightly better for deep model compared to shallow one. Occlusion sensitivity maps revealed that local specificity was greater for AU detection within than cross domains. The findings suggest that more varied domains and deep learning approaches may be better suited for generalizability and suggest the need for more attention to characteristics that vary between domains. Until further improvement is realized, caution is warranted when applying AU classifiers from one domain to another.
机译:面部动作单位(AU)探测器在训练和测试在同一域内时表现良好。 AU探测器如何转移到它们尚未培训的域名?我们审查了跨领域转移的文献,并进行实验以解决先前研究的局限性。我们评估四个公开数据库中的概括性。 EB +(扩展版本的BP4D +),SEENTEGE GFT,DISFA和UNBC肩痛(SP)。数据库在观察方案,上下文,参与者多样性,头部姿势,视频分辨率和AU基本速率的不同之处不同。在大多数情况下,性能随着域的变化而降低,通常低于行为研究所需的阈值。但是,注意到例外。与浅浅相比,深度和浅浅的方法通常与平均结果稍微稍微好转。闭塞敏感性图显示出在交叉结构域内的Au检测局部特异性更大。调查结果表明,更具不同的域和深度学习方法可能会更适合普遍性,并提示需要更多地关注域之间不同的特性。在实现进一步改进之前,在将AU分类器从一个域应用于另一个域的分类器时,保证谨慎。

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