Published February 12, 2025 | Version v1
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DataPlanet: Data for Data Science

  • 1. ROR icon University of California, San Diego

Description

Join us for two presentations from the fellows of the UC San Diego Data Planet Initiative, new data sharing resource to make it easier to find and use research-ready datasets.

Speaker: Shuheng Li

Title: The Collection and Application of MASD, a Multimodal Activity Sensing Dataset

Description: This project collects and presents MASD, an open-source Multimodal Activity Sensing Dataset designed to advance machine learning research in human activity recognition (HAR). MASD integrates data collected from three daily sensing devices: Inertial Measurement Unit (IMU) data in smartwatches and smartphones, WiFi Channel State Information (CSI) extracted by routers and body skeleton data captured by a Kinect camera. MASD enables various HAR research directions, including WiFi-based HAR, multimodal integration, sensing domain adaptation, and foundation model development. We highlight its potential by introducing a recently accepted paper that learns skeleton representation for downstream HAR tasks.

Speaker: Alessandro D'Amico

Title: Towards Large-Scale EEG Data Collection

Description: Novel insights into human cognition can benefit from advancements in machine learning and artificial intelligence. However, these modern models are dependent on large volumes of high quality datasets. This talk describes some groundwork conducted on validating low-cost EEG amplifiers for studying human cognition, as well as pilot studies into data collection in non-lab environments in order to explore the feasibility of large-scale EEG data acquisition.

This presentation was part of the UC Love Data Week 2025 program (https://uc-love-data-week.github.io).

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UC Love Data Week_DataPlanet_ Data for Data Science.mp4

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