Low-Complexity Framework for Movement Classification Using Body-Worn Sensors
Dwaipayan Biswas,Koushik Maharatna,Goran Panic,Evangelos B. Mazomenos,Josy Achner,Jasmin Klemke,Michael Jobges,Steffen Ortmann +7 more
TL;DR: A low-complexity framework for classifying elementary arm movements using wrist-worn inertial sensors is presented and could be used as a clinical tool to assess rehabilitation progress in neurodegenerative pathologies tracking occurrence of specific movements performed by patients with their paretic arm.
read more
Abstract: We present a low-complexity framework for classifying elementary arm movements (reach retrieve, lift cup to mouth, and rotate arm) using wrist-worn inertial sensors. We propose that this methodology could be used as a clinical tool to assess rehabilitation progress in neurodegenerative pathologies tracking occurrence of specific movements performed by patients with their paretic arm. Movements performed in a controlled training phase are processed to form unique clusters in a multidimensional feature space. Subsequent movements performed in an uncontrolled testing phase are associated with the proximal cluster using a minimum distance classifier (MDC). The framework involves performing the compute-intensive clustering on the training data set offline (MATLAB), whereas the computation of selected features on the testing data set and the minimum distance (Euclidean) from precomputed cluster centroids are done in hardware with an aim of low-power execution on sensor nodes. The architecture for feature extraction and MDC are realized using coordinate rotation digital computer-based design that classifies a movement in ( $9n+31$ ) clock cycles, n being number of data samples. The design synthesized in STMicroelectronics 130-nm technology consumed 5.3 nW at 50 Hz, besides being functionally verified up to 20 MHz, making it applicable for real-time high-speed operations. Our experimental results show that the system can recognize all three arm movements with average accuracies of 86% and 72% for four healthy subjects using accelerometer and gyroscope data, respectively, whereas for stroke survivors, the average accuracies were 67% and 60%. The framework was further demonstrated as a field-programmable gate array-based real-time system, interfacing with a streaming sensor unit.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Figures

Fig. 5. Overview of the MDC architecture. 
Fig. 6. Architecture for the minimum distance computation module. 
TABLE III LIST OF INPUT–OUTPUT SIGNALS 
Fig. 4. Sequence of features extracted from each triaxial data segment to form a 30-bit feature code. 
Fig. 1. Processing framework—offline/online processing of the training/ testing data set, respectively. 
TABLE IV RECOGNITION SENSITIVITIES FOR ARM MOVEMENTS OF HEALTHY SUBJECTS
Citations
CorNET: Deep Learning Framework for PPG-Based Heart Rate Estimation and Biometric Identification in Ambulant Environment
Dwaipayan Biswas,Luke R. Everson,Muqing Liu,Madhuri Panwar,Bram-Ernst Verhoef,Shrishail Patki,Chris H. Kim,Amit Acharyya,Chris Van Hoof,Mario Konijnenburg,Nick Van Helleputte +10 more
TL;DR: A novel deep learning framework (CorNET) to efficiently estimate heart rate (HR) information and perform biometric identification (BId) using only a wrist-worn, single-channel PPG signal collected in ambulant environment is presented.
277
Systematic review on the application of wearable inertial sensors to quantify everyday life motor activity in people with mobility impairments.
TL;DR: This systematic review provides a comprehensive overview of applications of wearable inertial sensors to quantify everyday life motor activity in people with mobility impairments and summarizes the state-of-the-art.
Motor fault detection using Quaternion Signal Analysis on FPGA
TL;DR: The Quaternion Signal Analysis (QSA) method is used to analyze statistical features of motor signals in order to detect faulty and healthy conditions in motor induction and provides accurate results using a reduced number of samples during classification.
13
Upper limb movement profiles during spontaneous motion in acute stroke.
TL;DR: In this paper, the velocity time series estimated from acquired acceleration data during spontaneous motion was decomposed into smaller movement elements and their disparity across the two hands was studied across different hand types.
8
Healthcare Monitoring Using Low-Cost Sensors to Supplement and Replace Human Sensation: Does It Have Potential to Increase Independent Living and Prevent Disease?
TL;DR: In this paper , the authors investigate the progress of the use of low-cost sensors in healthcare monitoring and discuss the challenges faced when accomplishing continuous and real-time monitoring tasks.
References
Activity recognition from user-annotated acceleration data
Ling Bao,Stephen S. Intille +1 more
- 21 Apr 2004
TL;DR: This is the first work to investigate performance of recognition algorithms with multiple, wire-free accelerometers on 20 activities using datasets annotated by the subjects themselves, and suggests that multiple accelerometers aid in recognition.
A Survey on Human Activity Recognition using Wearable Sensors
Oscar D. Lara,Miguel A. Labrador +1 more
TL;DR: The state of the art in HAR based on wearable sensors is surveyed and a two-level taxonomy in accordance to the learning approach and the response time is proposed.
2.6K
Sensor-Based Activity Recognition
Liming Chen,Jesse Hoey,Chris D. Nugent,Diane J. Cook,Zhiwen Yu +4 more
- 01 Nov 2012
TL;DR: A comprehensive survey to examine the development and current status of various aspects of sensor-based activity recognition, making a primary distinction in this paper between data-driven and knowledge-driven approaches.
1.1K
Activity classification using realistic data from wearable sensors
Juha Pärkkä,Miikka Ermes,Panu Korpipää,Jani Mäntyjärvi,Johannes Peltola,Ilkka Korhonen +5 more
- 01 Jan 2006
TL;DR: Methods used for classification of everyday activities like walking, running, and cycling are described to find out how to recognize activities, which sensors are useful and what kind of signal processing and classification is required.
908
Detection of Daily Activities and Sports With Wearable Sensors in Controlled and Uncontrolled Conditions
Miikka Ermes,Juha Pärkkä,Jani Mäntyjärvi,Ilkka Korhonen +3 more
- 01 Jan 2008
TL;DR: The aim of this study was to examine how well the daily activities and sports performed by the subjects in unsupervised settings can be recognized compared to supervised settings and support a vision of recognizing a wider spectrum, and more complex activities in real life settings.
802