Channel State Information Dataset for Multi-Human Activity Recognition in Indoor Environments

Citation Author(s):
Hari Prabhat
Gupta
IIT (BHU) Varanasi
Salla
Jahnavi
IIT (BHU) Varanasi
Mansi
Bhavikbhai
IIT (BHU) Varanasi
Rahul
Mishra
IIT Patna
Submitted by:
HARI GUPTA
Last updated:
Sun, 12/08/2024 - 13:24
DOI:
10.21227/e6c6-aa21
License:
0
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Abstract 

This paper presents the methodology and outcomes of a comprehensive dataset collection using ESP32-Nodemcu devices and the ESP32-CSI Toolkit. The dataset, designed to explore the capabilities of Channel State Information (CSI) in distinguishing human activities, was collected in a controlled indoor environment under three scenarios: single-user, two-user, and three-user setups. The experimental setup involved 80+ participants performing six carefully selected activities, ranging from subtle hand movements to dynamic full-body actions, ensuring diverse motion patterns and environmental interactions. The data acquisition process employed a transmitter-receiver configuration to capture fine-grained variations in CSI caused by human motion. By prioritizing distinct activities and managing variability, this dataset provides a robust foundation for develop- ing and validating multi-human activity recognition models. The work aims to advance the understanding of non-intrusive, device- free systems, offering valuable insights into the potential of WiFi signals for human activity recognition in complex environments.

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