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CSI-Activity-Recognition

Human Activity Recognition using Channel State Information for Wifi Applications

A simple Tensorflow 2.0+ model using Bidirectional LSTM stacked with one Attention Layer.

This code extends the previsous work of paper A Survey on Behaviour Recognition Using WiFi Channel State Information (corresponding code).

Dataset Preparation

Download the public dataset from here.

unzip the Dataset.tar.gz by the following command:

tar -xzvf Dataset.tar.gz

Inside the dataset, there are 7 different human activities: bed, fall, pickup, run, sitdown, standup and walk.

Requirements

Numpy

Tensorflow 2.0+

sklearn

Performance of the Model with Default Parameters

Default Parameters

Parameters for Batching Sequence Value
window length 1000
Sliding Steps 200
Downsample Factor 2
Activity Present Threshold 0.6 (60%)
Parameters for Deep Learning Model Value
# of units in Bidirectional LSTM 200
# of units in Attention Hidden State 400
Batch Size 128
Learning Rate 1e-4
Optimizer Adam
# of Epochs 60

Model Architecture

Architecture

Confusion Matrix

Confusion Matrix

Label Accuracy
bed 100%
fall 97.18%
pickup 98.68%
run 100%
sitdown 95%
standup 95.56%
walk 99.51%

Usage

Download the code from github.

git clone https://github.com/ludlows/CSI-Activity-Recognition.git 

Enter the code folder.

cd CSI-Activity-Recognition

Run The Model with Default Parameters

python csimodel.py your_raw_Dataset_folder

Meanwhile, you could also modify the parameters in the csimodel.py or change the architectures of neural networks.

This code could be a starting point for your deep learning project using Channel State Information.

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Human Activity Recognition using Channel State Information

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  • Python 100.0%