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Intro
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Human activity and/or behaviour recognition
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Representation learning requires LOTS of labelled d
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Typical pipeline for behaviour recognition
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Challenges with Sensor Data
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What makes good representation from sensor data?
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Various types of changes
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The Main Idea of Contrastive Learning
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Change Point Detection
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Evaluation Datasets
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Detecting COVID-19 cough sounds with
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Scalogram Contrastive Network
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Experiment Results
Description:
Explore data-efficient learning techniques for compact representations in sensor-based human behavior modeling. Delve into the challenges of limited labeled data in IoT environments and discover innovative approaches like domain adaptation and pretraining. Learn about contrastive learning, change point detection, and their applications in behavior recognition and COVID-19 cough sound detection. Examine evaluation datasets and experiment results to gain insights into scalable contrastive networks and their performance in real-world scenarios.

Learning Compact Representation with Less Labeled Data from Sensors

tinyML
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