Active Deep Learning for Activity Recognition with Context Aware Annotator Selection

H. S. Hossain, Nirmalya Roy
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引用次数: 31

Abstract

Machine learning models are bounded by the credibility of ground truth data used for both training and testing. Regardless of the problem domain, this ground truth annotation is objectively manual and tedious as it needs considerable amount of human intervention. With the advent of Active Learning with multiple annotators, the burden can be somewhat mitigated by actively acquiring labels of most informative data instances. However, multiple annotators with varying degrees of expertise poses new set of challenges in terms of quality of the label received and availability of the annotator. Due to limited amount of ground truth information addressing the variabilities of Activity of Daily Living (ADLs), activity recognition models using wearable and mobile devices are still not robust enough for real-world deployment. In this paper, we first propose an active learning combined deep model which updates its network parameters based on the optimization of a joint loss function. We then propose a novel annotator selection model by exploiting the relationships among the users while considering their heterogeneity with respect to their expertise, physical and spatial context. Our proposed model leverages model-free deep reinforcement learning in a partially observable environment setting to capture the action-reward interaction among multiple annotators. Our experiments in real-world settings exhibit that our active deep model converges to optimal accuracy with fewer labeled instances and achieves ~8% improvement in accuracy in fewer iterations.
基于上下文感知注释器选择的活动识别主动深度学习
机器学习模型受到用于训练和测试的真实数据可信度的限制。无论问题领域是什么,这种基础真理注释客观上都是手工的,而且冗长乏味,因为它需要大量的人工干预。随着带有多个注释器的主动学习的出现,通过主动获取大多数信息数据实例的标签可以在一定程度上减轻负担。然而,具有不同专业知识程度的多个注释者在收到的标签质量和注释者的可用性方面提出了一系列新的挑战。由于处理日常生活活动(adl)可变性的地面真实信息数量有限,使用可穿戴和移动设备的活动识别模型仍然不够健壮,无法用于现实世界的部署。在本文中,我们首先提出了一种主动学习组合深度模型,该模型基于联合损失函数的优化更新其网络参数。然后,我们通过利用用户之间的关系,同时考虑他们在专业知识、物理和空间背景方面的异质性,提出了一种新的注释者选择模型。我们提出的模型在部分可观察的环境设置中利用无模型深度强化学习来捕获多个注释者之间的动作-奖励交互。我们在现实环境中的实验表明,我们的主动深度模型在更少的标记实例下收敛到最优精度,并且在更少的迭代中实现了8%的精度提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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