A seq2seq model is proposed to learn universal embeddings from wearable and ambient sensor data for ADL recognition and semi-supervised learning.
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2019 1verdicts
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Activity2Vec: Learning ADL Embeddings from Sensor Data with a Sequence-to-Sequence Model
A seq2seq model is proposed to learn universal embeddings from wearable and ambient sensor data for ADL recognition and semi-supervised learning.