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arxiv 1801.07827 v1 pith:2QY7ENR2 submitted 2018-01-22 cs.LG stat.ML

Semi-Supervised Convolutional Neural Networks for Human Activity Recognition

classification cs.LG stat.ML
keywords semi-supervisedmethodsactivitycnnsdatalabeledlearningrecognition
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Labeled data used for training activity recognition classifiers are usually limited in terms of size and diversity. Thus, the learned model may not generalize well when used in real-world use cases. Semi-supervised learning augments labeled examples with unlabeled examples, often resulting in improved performance. However, the semi-supervised methods studied in the activity recognition literatures assume that feature engineering is already done. In this paper, we lift this assumption and present two semi-supervised methods based on convolutional neural networks (CNNs) to learn discriminative hidden features. Our semi-supervised CNNs learn from both labeled and unlabeled data while also performing feature learning on raw sensor data. In experiments on three real world datasets, we show that our CNNs outperform supervised methods and traditional semi-supervised learning methods by up to 18% in mean F1-score (Fm).

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