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Modality-wise relational reasoning for one-shot sensor-based activity recognition

机译:基于传感器的一拍传感器的活动识别的模态 - 方面的关系推理

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摘要

Deep learning concepts have been successfully transferred from the computer vision task to that of wearable human activity recognition (HAR) over the last few years. However, deep learning models require a large volume of annotated samples to be efficiently trained, while adding new activities results in training the whole network from scratch. In this paper, we study the use of one-shot learning techniques based on high-level features extracted by deep neural networks that rely on convolutional layers. Using these feature vectors as input we measure the similarity of two activities by computing their Euclidean distance, cosine similarity or applying self-attention to perceive the relations between the signals. We evaluate four different one-shot learning approaches using two publicly available HAR datasets, by keeping out of the training set several activity classes. Our results demonstrate that the model relying on modality-wise relational reasoning surpasses the other three, achieving 94.8% and 84.41% one-shot accuracy on UCL and PAMAP2 dataset respectively, while we demonstrate the model & rsquo;s sensitivity on fusing sensor modalities and provide explainable attention maps to display the modality-wise similarities.(c) 2021 Elsevier B.V. All rights reserved.
机译:在过去几年中,深入学习概念已成功转移到可穿戴人类活动识别(Har)的计算机视觉任务。然而,深度学习模型需要大量的注释样本进行有效培训,同时添加新活动导致从头开始培训整个网络。在本文中,我们基于依赖于卷积层的深神经网络提取的高级功能来研究一次性学习技术的使用。使用这些特征向量作为输入,我们通过计算其欧几里德距离,余弦相似度或应用自我关注来衡量两个活动的相似性以察觉信号之间的关系。通过避免培训设置多个活动类,我们使用两个公共可用的HAR数据集进行评估四种不同的一次性的一击学习方法。我们的结果表明,依赖于模态 - 方面的关系推理的模型超越了其他三个,分别在UCL和PAMAP2数据集上实现了94.8%和84.41%的一枪精度,而我们展示了模型和rsquo; S对融合传感器方式的敏感性和敏感性提供可解释的注意图以显示模态性相似之处。(c)2021 Elsevier BV保留所有权利。

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