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Progressive low-rank subspace alignment based on semi-supervised joint domain adaption for personalized emotion recognition

机译:基于半监督联合域适应的渐进低级子空间对齐,用于个性化情感识别

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Recently, many scenarios, such as affective disorders treatment, have sparked rising needs for establishment of personalized emotion recognition (PER) models. Unfortunately, the data sparsity issue violates the basic i.i.d. assumption of supervised learning (i.e., training data and test data are independently and identically distributed). In this paper, we present a semi-supervised joint domain adaption (SSJDA) solution, aiming to inject the hidden domain knowledge from ample labeled data of multiple source individuals into the target subject's customized model. Specifically, we put forward a novel Progressive Low Rank Subspace Alignment (PLRSA) approach, which unifies a semi-supervised instance-transfer paradigm and an unsupervised mapping-transfer learning paradigm in a single optimization framework. We leverage the boosting-based TrAdaBoost algorithm and the Transfer Component Analysis (TCA) algorithm for the implementation of instance reweighting and feature matching, respectively. Then we introduce the l(2,1)-norm to pass feedback and make the joint learning feasible. The central idea is to progressively minimize the cross-domain distribution discrepancies to finally construct the optimal domain-invariant features. We systematically compare the PLRSA method with five state-of-the-art techniques using two public EEG datasets (DEAP and SEED). Both many-to-one and one-to-one evaluations are performed. The experimental results have confirmed the efficacy of the proposed method. (C) 2021 Elsevier B.V. All rights reserved.
机译:最近,许多情景,如情感障碍治疗,引发了建立个性化情感识别(PER)模型的需求上升。不幸的是,数据稀疏问题违反了基本I.I.D.假设监督学习(即,培训数据和测试数据独立和相同分布)。在本文中,我们介绍了一个半监督的联合域适应(SSJDA)解决方案,旨在将隐藏的域知识从多个源个人的额外标记数据注入到目标主题的定制模型中。具体而言,我们提出了一种新颖的渐进低级子空间对齐(PLRSA)方法,它统一了半监督的实例转移范例和一个优化框架中的一个无监督的映射转移学习范例。我们利用基于促进的Tryaboost算法和传输分量分析(TCA)算法,分别用于实现实例重新传递和特征匹配。然后我们介绍L(2,1)-norm以传递反馈并使联合学习可行。中心想法是逐步最小化跨域分布差异最终构建最佳域不变特征。我们系统地使用两个公共EEG数据集(DEAP和SEED)对PLRSA方法进行了五种最先进的技术。执行多对一和一对一的评估。实验结果证实了该方法的功效。 (c)2021 elestvier b.v.保留所有权利。

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