Code for the "Sensing leg movement enhances wearable monitoring of energy expenditure" paper.

Overview

EnergyExpenditure

DOI

Code for the "Sensing leg movement enhances wearable monitoring of energy expenditure" paper. Additional data for replicating this study is available: https://simtk.org/projects/energy-est

Please cite this work if you use materials from it:

Slade, P., Kochenderfer, M.J., Delp, S.L. et al. Sensing leg movement enhances wearable monitoring of energy expenditure. Nat Commun 12, 4312 (2021).

This folder contains data, code, and results for validating the Wearable System. The software version, package dependencies, and installation instructions are listed at the bottom of this note.

The code folder contains python notebook files to process the raw validation data and produce energy expenditure estimates (compute_real_time_results.ipynb) and compute the figures from the paper (plots.ipynb). These files are Jupyter Notebook files, detailed instructions on this type of file and how to open them are available (https://jupyter-notebook.readthedocs.io/en/stable/examples/Notebook/Notebook%20Basics.html). Once the files are open select 'Run' and then 'Run all cells'. The output will appear below each cell. The compute_real_time_results.ipynb will plot the energy expenditure estimates of the Wearable System and raw metabolics measurements as well as the absolute percent error between the steady-state estimates of the Wearable System and metabolics. The plots.ipynb will produce replicates of the images shown in the manuscript for validating the processing of the different methods of estimating energy expenditure. The runtime is approximately 5 minutes on a "normal" desktop.

The real_time_model folder contains the weights for the linear regression model used by the Wearable System and the python file used to estimate energy expenditure in real time on the portable microcontroller (real_time_est.py).

The real_time_validation_data folder contains the metabolics and raw inertial measurement data for one of the validation subjects. This folder will need to be unzipped before being used. Each subject folder contains the raw metabolics data as a .xlsx file and conditions folders. The conditions folders contain the raw inertial measurement data broken into five second increments, stored in sequential 'npy' files. The file_timestamp.csv contains the timestamps when each of the 'npy' files were saved. The energy_exp_estimates.csv contains columns of the time from the start of the condition, date, and energy expenditure in Watts.

The results folder contains the estimates computed from the compute_real_time_results.ipynb to replicate the real-time Wearable System estimates from the validation experiment. The full_data folder contain all the data for the compared methods across all subjects to be able to replicate the figures in the paper.

The full dataset is available to reviewers in a private repository linked in the paper, but was not included in this folder due to size constraints. Upon acceptence this will be published in a public repository. This includes all simulation models, all data from each of the experiments, code to train the energy expenditure models, and processing code to compute estimates from the compared methods (heart rate, smartwatch, etc).

Python version 3.6.1 Modules: pandas (0.25.3) numpy (1.17.4) scikit-learn (0.21.3) scipy (1.3.2) setuptools (27.2.0) natsort (6.2.0) matplotlib (2.0.2) jupyter (1.0.0) ipython (5.3.0)

The installation process for Python and related packages will depend on the users operating system, but should take approximately 10 minutes on a "normal" desktop. See the python package installation guide for instructions: https://packaging.python.org/tutorials/installing-packages/

You might also like...
code for our ICCV 2021 paper
code for our ICCV 2021 paper "DeepCAD: A Deep Generative Network for Computer-Aided Design Models"

DeepCAD This repository provides source code for our paper: DeepCAD: A Deep Generative Network for Computer-Aided Design Models Rundi Wu, Chang Xiao,

Dataset and Code for ICCV 2021 paper
Dataset and Code for ICCV 2021 paper "Real-world Video Super-resolution: A Benchmark Dataset and A Decomposition based Learning Scheme"

Dataset and Code for RealVSR Real-world Video Super-resolution: A Benchmark Dataset and A Decomposition based Learning Scheme Xi Yang, Wangmeng Xiang,

Code for paper "Role-based network embedding via structural features reconstruction with degree-regularized constraint"

Role-based network embedding via structural features reconstruction with degree-regularized constraint Train python main.py --dataset brazil-flights

Code for the paper: Fusformer: A Transformer-based Fusion Approach for Hyperspectral Image Super-resolution

Fusformer Code for the paper: "Fusformer: A Transformer-based Fusion Approach for Hyperspectral Image Super-resolution" Plateform Python 3.8.5 + Pytor

The code for CVPR2022 paper "Likert Scoring with Grade Decoupling for Long-term Action Assessment".

Likert Scoring with Grade Decoupling for Long-term Action Assessment This is the code for CVPR2022 paper "Likert Scoring with Grade Decoupling for Lon

Code for CVPR 2022 paper
Code for CVPR 2022 paper "SoftGroup for Instance Segmentation on 3D Point Clouds"

SoftGroup We provide code for reproducing results of the paper SoftGroup for 3D Instance Segmentation on Point Clouds (CVPR 2022) Author: Thang Vu, Ko

Code for CVPR'2022 paper ✨
Code for CVPR'2022 paper ✨ "Predict, Prevent, and Evaluate: Disentangled Text-Driven Image Manipulation Empowered by Pre-Trained Vision-Language Model"

PPE ✨ Repository for our CVPR'2022 paper: Predict, Prevent, and Evaluate: Disentangled Text-Driven Image Manipulation Empowered by Pre-Trained Vision-

Code for CVPR 2022 paper
Code for CVPR 2022 paper "Bailando: 3D dance generation via Actor-Critic GPT with Choreographic Memory"

Bailando Code for CVPR 2022 (oral) paper "Bailando: 3D dance generation via Actor-Critic GPT with Choreographic Memory" [Paper] | [Project Page] | [Vi

Fast image augmentation library and easy to use wrapper around other libraries. Documentation:  https://albumentations.ai/docs/ Paper about library: https://www.mdpi.com/2078-2489/11/2/125
Fast image augmentation library and easy to use wrapper around other libraries. Documentation: https://albumentations.ai/docs/ Paper about library: https://www.mdpi.com/2078-2489/11/2/125

Albumentations Albumentations is a Python library for image augmentation. Image augmentation is used in deep learning and computer vision tasks to inc

Releases(v1.0.0)
Owner
Patrick S
Patrick S
fishington.io bot with OpenCV and NumPy

fishington.io-bot fishington.io bot with using OpenCV and NumPy bot can continue to fishing fully automatically how to use Open cmd in fishington.io-b

Bahadır Araz 77 Jan 02, 2023
A bot that plays TFT using OCR. Keeps track of bench, board, items, and plays the user defined team comp.

NOTES: To ensure best results, make sure you are running this on a computer that has decent specs. 1920x1080 fullscreen is required in League, game mu

francis 125 Dec 30, 2022
Repository of conference publications and source code for first-/ second-authored papers published at NeurIPS, ICML, and ICLR.

Repository of conference publications and source code for first-/ second-authored papers published at NeurIPS, ICML, and ICLR.

Daniel Jarrett 26 Jun 17, 2021
Image Smoothing and Blurring Using OpenCV

Image-Smoothing-and-Blurring-Using-OpenCV This repository contains codes for performing image smoothing and blurring using OpenCV. There are different

Happy N. Monday 3 Feb 15, 2022
This is a Computer vision package that makes its easy to run Image processing and AI functions. At the core it uses OpenCV and Mediapipe libraries.

CVZone This is a Computer vision package that makes its easy to run Image processing and AI functions. At the core it uses OpenCV and Mediapipe librar

CVZone 648 Dec 30, 2022
BD-ALL-DIGIT - This Is Bangladeshi All Sim Cloner Tools

BANGLADESHI ALL SIM CLONER TOOLS INSTALL TOOL ON TERMUX $ apt update $ apt upgra

MAHADI HASAN AFRIDI 2 Jan 19, 2022
A machine learning software for extracting information from scholarly documents

GROBID GROBID documentation Visit the GROBID documentation for more detailed information. Summary GROBID (or Grobid, but not GroBid nor GroBiD) means

Patrice Lopez 1.9k Jan 08, 2023
An expandable and scalable OCR pipeline

Overview Nidaba is the central controller for the entire OGL OCR pipeline. It oversees and automates the process of converting raw images into citable

81 Jan 04, 2023
Localization of thoracic abnormalities model based on VinBigData (top 1%)

Repository contains the code for 2nd place solution of VinBigData Chest X-ray Abnormalities Detection competition. The goal of competition was to auto

33 May 24, 2022
Code release for Hu et al., Learning to Segment Every Thing. in CVPR, 2018.

Learning to Segment Every Thing This repository contains the code for the following paper: R. Hu, P. Dollár, K. He, T. Darrell, R. Girshick, Learning

Ronghang Hu 417 Oct 03, 2022
Converts an image into funny, smaller amongus characters

SussyImage Converts an image into funny, smaller amongus characters Demo Mona Lisa | Lona Misa (Made up of AmongUs characters) API I've also added an

Dhravya Shah 14 Aug 18, 2022
Programa que viabiliza a OCR (Optical Character Reading - leitura óptica de caracteres) de um PDF.

Este programa tem o intuito de ser um modificador de arquivos PDF. Os arquivos PDFs podem ser 3: PDFs verdadeiros - em que podem ser selecionados o ti

Daniel Soares Saldanha 2 Oct 11, 2021
MONAI Label is a server-client system that facilitates interactive medical image annotation by using AI.

MONAI Label is a server-client system that facilitates interactive medical image annotation by using AI. It is an open-source and easy-to-install ecosystem that can run locally on a machine with one

Project MONAI 344 Dec 23, 2022
OCR, Object Detection, Number Plate, Real Time

README.md PrePareded anaconda env requirements.txt clova AI → deep text recognition → trained weights (ex, .pth) wpod-net weights (ex, .h5 , .json) ht

Kaven Lee 7 Dec 06, 2022
Text page dewarping using a "cubic sheet" model

page_dewarp Page dewarping and thresholding using a "cubic sheet" model - see full writeup at https://mzucker.github.io/2016/08/15/page-dewarping.html

Matt Zucker 1.2k Dec 29, 2022
Official implementation of Character Region Awareness for Text Detection (CRAFT)

CRAFT: Character-Region Awareness For Text detection Official Pytorch implementation of CRAFT text detector | Paper | Pretrained Model | Supplementary

Clova AI Research 2.5k Jan 03, 2023
Computer vision applications project (Flask and OpenCV)

Computer Vision Applications Project This project is at it's initial phase. This is all about the implementation of different computer vision techniqu

Suryam Thapa 1 Jan 26, 2022
FastOCR is a desktop application for OCR API.

FastOCR FastOCR is a desktop application for OCR API. Installation Arch Linux fastocr-git @ AUR Build from AUR or install with your favorite AUR helpe

Bruce Zhang 58 Jan 07, 2023
OpenGait is a flexible and extensible gait recognition project

A flexible and extensible framework for gait recognition. You can focus on designing your own models and comparing with state-of-the-arts easily with the help of OpenGait.

Shiqi Yu 335 Dec 22, 2022
Convolutional Recurrent Neural Networks(CRNN) for Scene Text Recognition

CRNN_Tensorflow This is a TensorFlow implementation of a Deep Neural Network for scene text recognition. It is mainly based on the paper "An End-to-En

MaybeShewill-CV 1000 Dec 27, 2022