Title :
Software for human gait analysis and classification
Author :
Vieira, Alexandra ; Sobral, Heloisa ; Ferreira, Joao P. ; Ferreira, Paulo ; Cruz, Stephane ; Crisostomo, Manuel ; Coimbra, A. Paulo
Author_Institution :
Dept. of Electr. Eng., Super. Inst. of Eng. of Coimbra, Coimbra, Portugal
Abstract :
Summary form only given. Human gait analysis can be performed by using a treadmill and two aligned web cameras, positioned one on each side of the treadmill. In this system, passive marks are positioned on person´s joints and various angles of the gait are recorded by the cameras at different speeds of the treadmill. The treadmill´s speed is appropriated for each person clinical case. This system is a substantial evolution from [1] at a much lower cost than [2] and [3]. This research project aims to create software capable of generating joint trajectory references of healthy people gaits, considering height, weight, age and test speed. These trajectories will be used as reference to compare with the data of a person with an abnormal gait. From this comparison a classification of the severity of the pathology will be obtained. The developed software uses an artificial neural network, based on 97 samples from 20 walking people with healthy gaits, collected on treadmill´s tests. 70% of the samples were used for training, 5% for validation and 25% for testing. The two best neural networks for the knee joints are constituted by 10 or 12 neurons in the hidden layer, showing regression values higher than 97%. They have four inputs (height, weight, age and test speed) and the output is the reference knee joint trajectory. In this project it is also used the extreme learning machine, as an alternative computational intelligence approach of the neural network. With this software physiotherapists can make gait pattern comparisons taking into account the specific characteristics of each person, instead of comparisons with the standard gait patterns of the literature that does not differentiate for different characteristics. The system was tested analyzing the gait of 7 persons who were subjected to ligamentoplasty (surgical reconstruction) about two years ago, after suffering a rupture of the anterior cruciate ligament of the knee. Collected data were compared with the traj- ctory references generated by the software for each person taking into account their physical characteristics. The results show that this software makes it possible to analyze and quantify the severity of gait pathologies, which is a significant improvement to the present subjective analysis practice.
Keywords :
biomedical measurement; biomedical optical imaging; bone; cameras; data analysis; gait analysis; health care; learning (artificial intelligence); medical disorders; neural nets; patient care; software engineering; training; ANN software age input; ANN software height input; ANN software output; ANN software system test; ANN software test speed input; ANN software weight input; ANN software-assisted gait pathology analysis; ANN software-generated trajectory reference; ANN software-quantified gait pathology; ANN-based software; abnormal gait analysis; age-based joint trajectory reference; aligned web cameras; alternative computational intelligence approach; anterior cruciate ligament rupture; artificial neural network-based software; camera-recorded gait angle; clinical case-dependent treadmill speed; collected data-trajectory reference comparison; extreme learning machine; gait angle-positioned passive marks; gait pathology severity analysis; gait pathology severity quantification; healthy people gaits; height-based joint trajectory reference; hidden layer neurons; human gait analysis software; human gait classification software; joint trajectory reference generation; joint-positioned passive marks; knee anterior cruciate ligament; knee joint neural networks; ligamentoplasty patient gait analysis; literature-provided standard gait patterns; neural network computational intelligence approach; passive mark position; pathology severity classification; physiotherapist-analyzed patient gait patterns; reference knee joint trajectory; regression values; software system-generated trajectory reference; software-assisted gait pattern comparison; subjective gait pathology analysis practice; substantial evolution; surgical reconstruction patient gait analysis; test speed-based joint trajectory reference; trajectory-based patient data comparison; treadmill speed-dependent gait angle; treadmill test-collected gait data; treadmill-based human gait analysis; walking people healthy gaits; web camera-based human gait analysis; weight-based joint trajectory reference; Artificial neural networks; Cameras; Joints; Knee; Pathology; Software; Trajectory; Artificial Neural Network; Extreme Learning Machine; Human Gait Analysis;
Conference_Titel :
Bioengineering (ENBENG), 2015 IEEE 4th Portuguese Meeting on
Conference_Location :
Porto
DOI :
10.1109/ENBENG.2015.7088805