Using Language Model to Bootstrap Human Activity Recognition Ambient Sensors Based in Smart Homes

Overview

Using Language Model to Bootstrap Human Activity Recognition Ambient Sensors Based in Smart Homes

This repository is the official implementation of Using Language Model to Bootstrap Human Activity Recognition Ambient Sensors Based in Smart Homes.

Requirements

To install requirements:

To use this repository you should download and install SmartHomeHARLib package

git clone [email protected]:dbouchabou/SmartHomeHARLib.git
pip install -r requirements.txt
cd SmartHomeHARLib
python setup.py develop

Embeddings Training

To train Embedding model(s) of the paper, run this command:

To train a Word2Vec model on a dataset, run this command:

python Word2vecEmbeddingExperimentations.py --d cairo

To train a ELMo model on a dataset, run this command:

python ELMoEmbeddingExperimentations.py --d cairo

Activity Sequences Classification Training And Evaluation

To train Classifier(s) model(s) of the paper, run this command:

python PretrainEmbeddingExperimentations.py --d cairo --e bi_lstm --c config/no_embedding_bi_lstm.json
python PretrainEmbeddingExperimentations.py --d cairo --e liciotti_bi_lstm --c config/liciotti_bi_lstm.json
python PretrainEmbeddingExperimentations.py --d cairo --e w2v_bi_lstm --c config/cairo_bi_lstm_w2v.json
python PretrainEmbeddingExperimentations.py --d cairo --e elmo_bi_lstm --c config/cairo_bi_lstm_elmo_concat.json

Results

Our model achieves the following performance on :

Three CASAS datasets

Aruba Aruba Aruba Aruba Milan Milan Milan Milan Cairo Cairo Cairo Cairo
No Embedding Liciotti W2V ELMo No Embedding Liciotti W2V ELMo No Embedding Liciotti W2V ELMo
Accuracy 95.01 96.52 96.59 96.76 82.24 90.54 88.33 90.14 81.68 84.99 82.27 90.12
Precision 94.69 96.11 96.23 96.43 82.28 90.08 88.28 90.20 80.22 83.17 82.04 88.41
Recall 95.01 96.50 96.59 96.69 82.24 90.45 88.33 90.31 81.68 82.98 82.27 87.59
F1 score 94.74 96.22 96.32 96.42 81.97 90.02 87.98 90.10 80.49 82.18 81.14 87.48
Balance Accuracy 77.73 79.96 81.06 79.98 67.77 74.31 73.61 78.25 70.09 77.52 69.38 87.00
Weighted Precision 79.75 82.30 82.97 88.64 79.6 82.03 84.42 87.56 68.45 80.03 77.56 86.83
Weighted Recall 77.73 80.71 81.06 79.17 67.77 75.51 73.62 78.75 70.09 73.82 69.38 84.78
Weighted F1 score 77.92 81.21 81.43 82.93 71.81 77.74 76.59 82.26 68.47 74.84 70.95 84.71
Owner
Damien Bouchabou
PhD Candidate in Machine Learning and Human Activities Recognition
Damien Bouchabou
Time series annotation library.

CrowdCurio Time Series Annotator Library The CrowdCurio Time Series Annotation Library implements classification tasks for time series. Features Suppo

CrowdCurio 51 Sep 15, 2022
Yet Another Robotics and Reinforcement (YARR) learning framework for PyTorch.

Yet Another Robotics and Reinforcement (YARR) learning framework for PyTorch.

Stephen James 51 Dec 27, 2022
Official repository of the paper Privacy-friendly Synthetic Data for the Development of Face Morphing Attack Detectors

SMDD-Synthetic-Face-Morphing-Attack-Detection-Development-dataset Official repository of the paper Privacy-friendly Synthetic Data for the Development

10 Dec 12, 2022
PyExplainer: A Local Rule-Based Model-Agnostic Technique (Explainable AI)

PyExplainer PyExplainer is a local rule-based model-agnostic technique for generating explanations (i.e., why a commit is predicted as defective) of J

AI Wizards for Software Management (AWSM) Research Group 14 Nov 13, 2022
Implementation of Deformable Attention in Pytorch from the paper "Vision Transformer with Deformable Attention"

Deformable Attention Implementation of Deformable Attention from this paper in Pytorch, which appears to be an improvement to what was proposed in DET

Phil Wang 128 Dec 24, 2022
Repository for scripts and notebooks from the book: Programming PyTorch for Deep Learning

Repository for scripts and notebooks from the book: Programming PyTorch for Deep Learning

Ian Pointer 368 Dec 17, 2022
Multivariate Time Series Forecasting with efficient Transformers. Code for the paper "Long-Range Transformers for Dynamic Spatiotemporal Forecasting."

Spacetimeformer Multivariate Forecasting This repository contains the code for the paper, "Long-Range Transformers for Dynamic Spatiotemporal Forecast

QData 440 Jan 02, 2023
Bio-OFC gym implementation and Gym-Fly environment

Bio-OFC gym implementation and Gym-Fly environment This repository includes the gym compatible implementation of the Bio-OFC algorithm from the paper

Siavash Golkar 1 Nov 16, 2021
10th place solution for Google Smartphone Decimeter Challenge at kaggle.

Under refactoring 10th place solution for Google Smartphone Decimeter Challenge at kaggle. Google Smartphone Decimeter Challenge Global Navigation Sat

12 Oct 25, 2022
TipToiDog - Tip Toi Dog With Python

TipToiDog Was ist dieses Projekt? Meine 5-jährige Tochter spielt sehr gerne das

1 Feb 07, 2022
LF-YOLO (Lighter and Faster YOLO) is used to detect defect of X-ray weld image.

This project is based on ultralytics/yolov3. LF-YOLO (Lighter and Faster YOLO) is used to detect defect of X-ray weld image. Download $ git clone http

26 Dec 13, 2022
Realtime_Multi-Person_Pose_Estimation

Introduction Multi Person PoseEstimation By PyTorch Results Require Pytorch Installation git submodule init && git submodule update Demo Download conv

tensorboy 1.3k Jan 05, 2023
3DV 2021: Synergy between 3DMM and 3D Landmarks for Accurate 3D Facial Geometry

SynergyNet 3DV 2021: Synergy between 3DMM and 3D Landmarks for Accurate 3D Facial Geometry Cho-Ying Wu, Qiangeng Xu, Ulrich Neumann, CGIT Lab at Unive

Cho-Ying Wu 239 Jan 06, 2023
Pretrained Cost Model for Distributed Constraint Optimization Problems

Pretrained Cost Model for Distributed Constraint Optimization Problems Requirements PyTorch 1.9.0 PyTorch Geometric 1.7.1 Directory structure baseline

2 Aug 28, 2022
The Most Efficient Temporal Difference Learning Framework for 2048

moporgic/TDL2048+ TDL2048+ is a highly optimized temporal difference (TD) learning framework for 2048. Features Many common methods related to 2048 ar

Hung Guei 5 Nov 23, 2022
An implementation of the Contrast Predictive Coding (CPC) method to train audio features in an unsupervised fashion.

CPC_audio This code implements the Contrast Predictive Coding algorithm on audio data, as described in the paper Unsupervised Pretraining Transfers we

8 Nov 14, 2022
Technical Indicators implemented in Python only using Numpy-Pandas as Magic - Very Very Fast! Very tiny! Stock Market Financial Technical Analysis Python library . Quant Trading automation or cryptocoin exchange

MyTT Technical Indicators implemented in Python only using Numpy-Pandas as Magic - Very Very Fast! to Stock Market Financial Technical Analysis Python

dev 34 Dec 27, 2022
A Momentumized, Adaptive, Dual Averaged Gradient Method for Stochastic Optimization

MADGRAD Optimization Method A Momentumized, Adaptive, Dual Averaged Gradient Method for Stochastic Optimization pip install madgrad Try it out! A best

Meta Research 774 Dec 31, 2022
Metric learning algorithms in Python

metric-learn: Metric Learning in Python metric-learn contains efficient Python implementations of several popular supervised and weakly-supervised met

1.3k Dec 28, 2022
scikit-learn inspired API for CRFsuite

sklearn-crfsuite sklearn-crfsuite is a thin CRFsuite (python-crfsuite) wrapper which provides interface simlar to scikit-learn. sklearn_crfsuite.CRF i

417 Dec 20, 2022