Temporal Segmentation of Human Motion for Rehabilitation

Temporal Segmentation of Human Motion for Rehabilitation PDF Author: Jonathan Feng-Shun Lin
Publisher:
ISBN:
Category : Machine learning
Languages : en
Pages : 187

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Book Description
Current physiotherapy practice relies on visual observation of patient movement for assessment and diagnosis. Automation of motion monitoring has the potential to improve accuracy and reliability, and provide additional diagnostic insight to the clinician, improving treatment quality, and patient progress. To enable automated monitoring, assessment, and diagnosis, the movements of the patient must be temporally segmented from the continuous measurements. Temporal segmentation is the process of identifying the starting and ending locations of movement primitives in a time-series data sequence. Most segmentation algorithms require training data, but a priori knowledge of the patient's movement patterns may not be available, necessitating the use of healthy population data for training. However, healthy population movement data may not generalize well to rehabilitation patients due to large differences in motion characteristics between the two demographics. In this thesis, four key contributions will be elaborated to enable accurate segmentation of patient movement data during rehabilitation. The first key contribution is the creation of a segmentation framework to categorize and compare different segmentation algorithms considering segment definitions, data sources, application specific requirements, algorithm mechanics, and validation techniques. This framework provides a structure for considering the factors that must be incorporated when constructing a segmentation and identification algorithm. The framework enables systematic comparison of different segmentation algorithms, provides the means to examine the impact of each algorithm component, and allows for a systematic approach to determine the best algorithm for a given situation. The second key contribution is the development of an online and accurate motion segmentation algorithm based on a classification framework. The proposed algorithm transforms the segmentation task into a classification problem by modelling the segment edge point directly. Given this formulation, a variety of feature transformation, dimensionality reduction and classifier techniques were investigated on several healthy and patient datasets. With proper normalization, the segmentation algorithm can be trained using healthy participant data and obtain high quality segments on patient data. Inter-participant and inter-primitive variability were assessed on a dataset of 30 healthy participants and 44 rehabilitation participants, demonstrating the generalizability and utility of the proposed approach for rehabilitation settings. The proposed approach achieves a segmentation accuracy of 83-100%. The third key contribution is the investigation of feature set generalizability of the proposed method. Nearly all segmentation techniques developed previously use a single sensor modality. The proposed method was applied to joint angles, electromyogram, motion capture, and force plate data to investigate how the choice of modality impacts segmentation performance. With proper normalization, the proposed method was shown to work with various input sensor types and achieved high accuracy on all sensor modalities examined. The proposed approach achieves a segmentation accuracy of 72-97%. The fourth key contribution is the development of a new feature set based on hypotheses about the optimality of human motion trajectory generation. A common hypothesis in human motor control is that human movement is generated by optimizing with respect to a certain criterion and is task dependent. In this thesis, a method to segment human movement by detecting changes to the optimization criterion being used via inverse trajectory optimization is proposed. The control strategy employed by the motor system is hypothesized to be a weighted sum of basis cost functions, with the basis weights changing with changes to the motion objective(s). Continuous time series data of movement is processed using a sliding fixed width window, estimating the basis weights of each cost function for each window by minimizing the Karush-Kuhn-Tucker optimality conditions. The quality of the cost function recovery is verified by evaluating the residual. The successfully estimated basis weights are averaged together to create a set of time varying basis weights that describe the changing control strategy of the motion and can be used to segment the movement with simple thresholds. The proposed algorithm is first demonstrated on simulation data and then demonstrated on a dataset of human subjects performing a series of exercise tasks. The proposed approach achieves a segmentation accuracy of 74-88%.

Temporal Segmentation of Human Motion for Rehabilitation

Temporal Segmentation of Human Motion for Rehabilitation PDF Author: Jonathan Feng-Shun Lin
Publisher:
ISBN:
Category : Machine learning
Languages : en
Pages : 187

Get Book Here

Book Description
Current physiotherapy practice relies on visual observation of patient movement for assessment and diagnosis. Automation of motion monitoring has the potential to improve accuracy and reliability, and provide additional diagnostic insight to the clinician, improving treatment quality, and patient progress. To enable automated monitoring, assessment, and diagnosis, the movements of the patient must be temporally segmented from the continuous measurements. Temporal segmentation is the process of identifying the starting and ending locations of movement primitives in a time-series data sequence. Most segmentation algorithms require training data, but a priori knowledge of the patient's movement patterns may not be available, necessitating the use of healthy population data for training. However, healthy population movement data may not generalize well to rehabilitation patients due to large differences in motion characteristics between the two demographics. In this thesis, four key contributions will be elaborated to enable accurate segmentation of patient movement data during rehabilitation. The first key contribution is the creation of a segmentation framework to categorize and compare different segmentation algorithms considering segment definitions, data sources, application specific requirements, algorithm mechanics, and validation techniques. This framework provides a structure for considering the factors that must be incorporated when constructing a segmentation and identification algorithm. The framework enables systematic comparison of different segmentation algorithms, provides the means to examine the impact of each algorithm component, and allows for a systematic approach to determine the best algorithm for a given situation. The second key contribution is the development of an online and accurate motion segmentation algorithm based on a classification framework. The proposed algorithm transforms the segmentation task into a classification problem by modelling the segment edge point directly. Given this formulation, a variety of feature transformation, dimensionality reduction and classifier techniques were investigated on several healthy and patient datasets. With proper normalization, the segmentation algorithm can be trained using healthy participant data and obtain high quality segments on patient data. Inter-participant and inter-primitive variability were assessed on a dataset of 30 healthy participants and 44 rehabilitation participants, demonstrating the generalizability and utility of the proposed approach for rehabilitation settings. The proposed approach achieves a segmentation accuracy of 83-100%. The third key contribution is the investigation of feature set generalizability of the proposed method. Nearly all segmentation techniques developed previously use a single sensor modality. The proposed method was applied to joint angles, electromyogram, motion capture, and force plate data to investigate how the choice of modality impacts segmentation performance. With proper normalization, the proposed method was shown to work with various input sensor types and achieved high accuracy on all sensor modalities examined. The proposed approach achieves a segmentation accuracy of 72-97%. The fourth key contribution is the development of a new feature set based on hypotheses about the optimality of human motion trajectory generation. A common hypothesis in human motor control is that human movement is generated by optimizing with respect to a certain criterion and is task dependent. In this thesis, a method to segment human movement by detecting changes to the optimization criterion being used via inverse trajectory optimization is proposed. The control strategy employed by the motor system is hypothesized to be a weighted sum of basis cost functions, with the basis weights changing with changes to the motion objective(s). Continuous time series data of movement is processed using a sliding fixed width window, estimating the basis weights of each cost function for each window by minimizing the Karush-Kuhn-Tucker optimality conditions. The quality of the cost function recovery is verified by evaluating the residual. The successfully estimated basis weights are averaged together to create a set of time varying basis weights that describe the changing control strategy of the motion and can be used to segment the movement with simple thresholds. The proposed algorithm is first demonstrated on simulation data and then demonstrated on a dataset of human subjects performing a series of exercise tasks. The proposed approach achieves a segmentation accuracy of 74-88%.

Human Motion Capture and Identification for Assistive Systems Design in Rehabilitation

Human Motion Capture and Identification for Assistive Systems Design in Rehabilitation PDF Author: Pubudu N. Pathirana
Publisher: John Wiley & Sons
ISBN: 1119515238
Category : Technology & Engineering
Languages : en
Pages : 240

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Book Description
HUMAN MOTION CAPTURE AND IDENTIFICATION FOR ASSISTIVE SYSTEMS DESIGN IN REHABILITATION A guide to the core ideas of human motion capture in a rapidly changing technological landscape Human Motion Capture and Identification for Assistive Systems Design in Rehabilitation aims to fill a gap in the literature by providing a link between sensing, data analytics, and signal processing through the characterisation of movements of clinical significance. As noted experts on the topic, the authors apply an application-focused approach in offering an essential guide that explores various affordable and readily available technologies for sensing human motion. The book attempts to offer a fundamental approach to the capture of human bio-kinematic motions for the purpose of uncovering diagnostic and severity assessment parameters of movement disorders. This is achieved through an analysis of the physiological reasoning behind such motions. Comprehensive in scope, the text also covers sensors and data capture and details their translation to different features of movement with clinical significance, thereby linking them in a seamless and cohesive form and introducing a new form of assistive device design literature. This important book: Offers a fundamental approach to bio-kinematic motions and the physiological reasoning behind such motions Includes information on sensors and data capture and explores their clinical significance Links sensors and data capture to parameters of interest to therapists and clinicians Addresses the need for a comprehensive coverage of human motion capture and identification for the purpose of diagnosis and severity assessment of movement disorders Written for academics, technologists, therapists, and clinicians focusing on human motion, Human Motion Capture and Identification for Assistive Systems Design in Rehabilitation provides a holistic view for assistive device design, optimizing various parameters of interest to relevant audiences.

Temporal Segmentation of Tasks from Human Hand Motion

Temporal Segmentation of Tasks from Human Hand Motion PDF Author: Sing Bing Kang
Publisher:
ISBN:
Category : Robotics
Languages : en
Pages : 41

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Book Description
The temporal task segmentation process is important as it serves as a preprocessing step to the characterization of the task phases. Once the breakpoints have been identified, steps to recognize the grasp and extract the object motion can then be carried out."

Multi-disciplinary Trends in Artificial Intelligence

Multi-disciplinary Trends in Artificial Intelligence PDF Author: Antonis Bikakis
Publisher: Springer
ISBN: 3319261819
Category : Computers
Languages : en
Pages : 465

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Book Description
This book constitutes the refereed conference proceedings of the 9th International Conference on Multi-disciplinary Trends in Artificial Intelligence, MIWAI 2015, held in Fuzhou, China, in November 2015. The 30 revised full papers presented together with 12 short papers were carefully reviewed and selected from 83 submissions. The papers feature a wide range of topics covering knowledge representation, reasoning, and management; multi-agent systems; data mining and machine learning; computer vision; robotics; AI in bioinformatics; AI in security and networks; and other AI applications.

Automatic Temporal Segmentation of Human Actions

Automatic Temporal Segmentation of Human Actions PDF Author: Vignesh Saravanan Kannappan
Publisher:
ISBN:
Category :
Languages : en
Pages : 176

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Book Description


Temporal Segmentation of Tasks from Human Hand Motion

Temporal Segmentation of Tasks from Human Hand Motion PDF Author: Sing Bing Kang
Publisher:
ISBN:
Category : Robotics
Languages : en
Pages : 0

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Book Description
The temporal task segmentation process is important as it serves as a preprocessing step to the characterization of the task phases. Once the breakpoints have been identified, steps to recognize the grasp and extract the object motion can then be carried out."

Human Motion

Human Motion PDF Author: Bodo Rosenhahn
Publisher: Springer Science & Business Media
ISBN: 1402066929
Category : Computers
Languages : en
Pages : 628

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Book Description
This is the first book which informs about recent progress in biomechanics, computer vision and computer graphics – all in one volume. Researchers from these areas have contributed to this book to promote the establishment of human motion research as a multi-facetted discipline and to improve the exchange of ideas and concepts between these three areas. The book combines carefully written reviews with detailed reports on recent progress in research.

Human Motion

Human Motion PDF Author: Francisco Javier Torres Reyes
Publisher:
ISBN:
Category :
Languages : en
Pages : 138

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Book Description
The analysis of motion similarity, particularly human motion similarity, is needed in different areas of study: motion blending, where new motions are generated from previous ones and they are intended to be as realistic as possible; motion retrieval, where indexing, searching and retrieving a particular movement from databases of motions capture data is required; and performance analysis of dancers and athletes, where the examination of recorded dances and exercises allows to track the evolution of characteristics to be analyzed, such as strength, speed, etc. This dissertation offers a framework for measuring human motion similarity by modeling human motion as a set of 3-dimensional curves represented as orthogonal changes of direction, and then by using a human movement notation that describes such human motion in a way that temporal and spatial analysis of human motion similarity can be achieved. For purposes of evaluating the feasibility of this approach, a set of baseline key rehabilitation exercises has been chosen and tested using our implementation. Motion capture sessions for the key rehabilitation exercises provided the data for the experiments. FastDTW, an algorithm for measuring similarity between two temporal sequences, was used to compare the result of our implementation. One of the main contributions of this proposal is the modeling of human motion as chain codes, or strings composed of characters from a finite alphabet. This model of human motion allows the use of string matching algorithms, sequence alignment algorithms, and statistical analysis approaches to achieve the analysis of similarity. Another contribution is the ability of spatial and temporal analysis due to the proposed model and description of the human motion. This technique takes data from a motion capture session, regardless the technique used in those sessions. The only requirement is that data must contain timed three-dimensional positions of the markers used, and information regarding the part of the body those markers were set during the motion capture session. Finally, based on the description of the key rehabilitation exercises, we suggested enhancements for LABANotation such purpose.

Advanced Analytics and Learning on Temporal Data

Advanced Analytics and Learning on Temporal Data PDF Author: Georgiana Ifrim
Publisher: Springer Nature
ISBN: 3031498968
Category : Computers
Languages : en
Pages : 315

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Book Description
This volume LNCS 14343 constitutes the refereed proceedings of the 8th ECML PKDD Workshop, AALTD 2023, in Turin, Italy, in September 2023. The 20 full papers were carefully reviewed and selected from 28 submissions. They are organized in the following topical section as follows: Machine Learning; Data Mining; Pattern Analysis; Statistics to Share their Challenges and Advances in Temporal Data Analysis.

Temporal Segmentation of Human Actions in Videos

Temporal Segmentation of Human Actions in Videos PDF Author: Alexander Richard
Publisher:
ISBN:
Category : Video recordings
Languages : en
Pages :

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Book Description