An investigation of transfer learning for deep architectures in group activity recognition

Karl Casserfelt, R. Mihailescu
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引用次数: 5

Abstract

Pervasive technologies permeating our immediate surroundings provide a wide variety of means for sensing and actuating in our environment, having a great potential to impact the way we live, but also how we work. In this paper, we address the problem of activity recognition in office environments, as a means for inferring contextual information in order to automatically and proactively assists people in their daily activities. To this end we employ state-of-the-art image processing techniques and evaluate their capabilities in a real-world setup. Traditional machine learning is characterized by instances where both the training and test data share the same distribution. When this is not the case, the performance of the learned model is deteriorated. However, often times, the data is expensive or difficult to collect and label. It is therefore important to develop techniques that are able to make the best possible use of existing data sets from related domains, relative to the target domain. To this end, we further investigate in this work transfer learning techniques in deep learning architectures for the task of activity recognition in office settings. We provide herein a solution model that attains a 94% accuracy under the right conditions.
基于迁移学习的深层架构群体活动识别研究
无处不在的技术渗透到我们周围的环境中,为我们的环境提供了各种各样的传感和驱动手段,有很大的潜力影响我们的生活方式,也影响我们的工作方式。在本文中,我们解决了办公环境中的活动识别问题,作为推断上下文信息的一种手段,以便自动和主动地帮助人们进行日常活动。为此,我们采用了最先进的图像处理技术,并在现实世界中评估了它们的能力。传统机器学习的特点是训练数据和测试数据共享相同的分布。如果不是这样,学习模型的性能就会下降。然而,通常情况下,数据是昂贵的或难以收集和标记。因此,重要的是开发能够尽可能充分利用相对于目标领域的相关领域的现有数据集的技术。为此,我们在这项工作中进一步研究了用于办公环境中活动识别任务的深度学习架构中的迁移学习技术。我们在此提供了一个解决方案模型,在适当的条件下达到94%的准确率。
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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