CNN-based Speed Detection Algorithm for Walking and Running using
Wrist-worn Wearable Sensors
- URL: http://arxiv.org/abs/2006.02348v1
- Date: Wed, 3 Jun 2020 15:53:46 GMT
- Title: CNN-based Speed Detection Algorithm for Walking and Running using
Wrist-worn Wearable Sensors
- Authors: Venkata Devesh Reddy Seethi, Pratool Bharti
- Abstract summary: In this paper, we design, implement and evaluate a convolutional neural network based algorithm that leverages accelerometer and sensory data from the wrist-worn device to detect the speed with high precision.
Our speed detection algorithm achieved $4.2%$ and $9.8%$ MAPE (Mean Absolute Error Percentage) value using $70-15-15$ train-test-evaluation split and leave-one-out cross-validation evaluation strategy respectively.
- Score: 1.6708670748115966
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In recent years, there have been a surge in ubiquitous technologies such as
smartwatches and fitness trackers that can track the human physical activities
effortlessly. These devices have enabled common citizens to track their
physical fitness and encourage them to lead a healthy lifestyle. Among various
exercises, walking and running are the most common ones people do in everyday
life, either through commute, exercise, or doing household chores. If done at
the right intensity, walking and running are sufficient enough to help
individual reach the fitness and weight-loss goals. Therefore, it is important
to measure walking/ running speed to estimate the burned calories along with
preventing them from the risk of soreness, injury, and burnout. Existing
wearable technologies use GPS sensor to measure the speed which is highly
energy inefficient and does not work well indoors. In this paper, we design,
implement and evaluate a convolutional neural network based algorithm that
leverages accelerometer and gyroscope sensory data from the wrist-worn device
to detect the speed with high precision. Data from $15$ participants were
collected while they were walking/running at different speeds on a treadmill.
Our speed detection algorithm achieved $4.2\%$ and $9.8\%$ MAPE (Mean Absolute
Error Percentage) value using $70-15-15$ train-test-evaluation split and
leave-one-out cross-validation evaluation strategy respectively.
Related papers
- Temporal Correlation Meets Embedding: Towards a 2nd Generation of JDE-based Real-Time Multi-Object Tracking [52.04679257903805]
Joint Detection and Embedding (JDE) trackers have demonstrated excellent performance in Multi-Object Tracking (MOT) tasks.
Our tracker, named TCBTrack, achieves state-of-the-art performance on multiple public benchmarks.
arXiv Detail & Related papers (2024-07-19T07:48:45Z) - Calorie Burn Estimation in Community Parks Through DLICP: A Mathematical Modelling Approach [0.0]
This study introduces DLICP (Deep Learning Integrated Community Parks), an innovative approach that combines deep learning techniques specifically, face recognition technology.
The DLICP utilizes a camera with face recognition software to accurately identify and track park users.
This study contributes significantly to the development of intelligent smart park systems, enabling real-time updates on burned calories and personalized fitness tracking.
arXiv Detail & Related papers (2024-07-06T07:45:05Z) - Human Activity Recognition using Smartphones [0.0]
We have created an Android application that recognizes the daily human activities and calculate the calories burnt in real time.
This is used for real-time activity recognition and calculation of calories burnt using a formula based on Metabolic Equivalent.
arXiv Detail & Related papers (2024-04-03T17:05:41Z) - P\=uioio: On-device Real-Time Smartphone-Based Automated Exercise
Repetition Counting System [1.4050836886292868]
We introduce a deep learning based exercise repetition counting system for smartphones consisting of five components: (1) Pose estimation, (2) Thresholding, (3) Optical flow, (4) State machine, and (5) Counter.
The system is then implemented via a cross-platform mobile application named P=uioio that uses only the smartphone camera to track repetitions in real time for three standard exercises: Squats, Push-ups, and Pull-ups.
arXiv Detail & Related papers (2023-07-22T01:38:02Z) - QuestSim: Human Motion Tracking from Sparse Sensors with Simulated
Avatars [80.05743236282564]
Real-time tracking of human body motion is crucial for immersive experiences in AR/VR.
We present a reinforcement learning framework that takes in sparse signals from an HMD and two controllers.
We show that a single policy can be robust to diverse locomotion styles, different body sizes, and novel environments.
arXiv Detail & Related papers (2022-09-20T00:25:54Z) - Fatigue Prediction in Outdoor Running Conditions using Audio Data [48.43471521490844]
Between $29%$ and $79%$ of runners sustain an overuse injury each year.
These injuries are linked to excessive fatigue, which alters how someone runs.
In this work, we explore the feasibility of modelling the Borg received perception of exertion (RPE) scale (range: $[6-20]$), a well-validated subjective measure of fatigue.
Using convolutional neural networks (CNNs) on log-Mel spectrograms, we obtain a mean absolute error of $2.35$ in subject-dependent experiments.
arXiv Detail & Related papers (2022-05-09T14:44:05Z) - Mobile Behavioral Biometrics for Passive Authentication [65.94403066225384]
This work carries out a comparative analysis of unimodal and multimodal behavioral biometric traits.
Experiments are performed over HuMIdb, one of the largest and most comprehensive freely available mobile user interaction databases.
In our experiments, the most discriminative background sensor is the magnetometer, whereas among touch tasks the best results are achieved with keystroke.
arXiv Detail & Related papers (2022-03-14T17:05:59Z) - Physical Activity Recognition by Utilising Smartphone Sensor Signals [0.0]
This study collected human activity data from 60 participants across two different days for a total of six activities recorded by gyroscope and accelerometer sensors in a modern smartphone.
The proposed approach achieved a classification accuracy of 98 percent in identifying four different activities.
arXiv Detail & Related papers (2022-01-20T09:58:52Z) - Benchmarking high-fidelity pedestrian tracking systems for research,
real-time monitoring and crowd control [55.41644538483948]
High-fidelity pedestrian tracking in real-life conditions has been an important tool in fundamental crowd dynamics research.
As this technology advances, it is becoming increasingly useful also in society.
To successfully employ pedestrian tracking techniques in research and technology, it is crucial to validate and benchmark them for accuracy.
We present and discuss a benchmark suite, towards an open standard in the community, for privacy-respectful pedestrian tracking techniques.
arXiv Detail & Related papers (2021-08-26T11:45:26Z) - SDOF-Tracker: Fast and Accurate Multiple Human Tracking by
Skipped-Detection and Optical-Flow [5.041369269600902]
This study aims to improve running speed by performing human detection at a certain frame interval.
We propose a method that complements the detection results with optical flow, based on the fact that someone's appearance does not change much between adjacent frames.
On the MOT20 dataset in the MOTChallenge, the proposed SDOF-Tracker achieved the best performance in terms of the total running speed.
arXiv Detail & Related papers (2021-06-27T15:35:35Z) - Pedestrian orientation dynamics from high-fidelity measurements [65.06084067891364]
We propose a novel measurement method based on a deep neural architecture that we train on the basis of generic physical properties of the motion of pedestrians.
We show that our method is capable of estimating orientation with an error as low as 7.5 degrees.
This tool opens up new possibilities in the studies of human crowd dynamics where orientation is key.
arXiv Detail & Related papers (2020-01-14T07:08:31Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.