2noIn this paper we describe a falls detection and classification algorithm for discriminating falls fromdaily life activities using a MEMS accelerometer. The algorithm is based on a shallow Neural Networkwith three hidden layers, used as fall/non fally classifier, trained with daily life activities features andfall features. The novelty of this algorithm is that synthetic falls are generated as multivariate randomGaussian features, so only real daily life features must be collected during some day of normal living.Moreover, the features related to synthetic fall events are generated as complement of normal features.First of all, the features acquired during daily life are clustered by Principal Component Analysis andno Fall activities shal...
In the past few years, several works describing systems for the prompt detection of falls have been ...
Abstract Background Falls can cause trauma, disability and death among older people. Ambulatory acce...
Falls are dangerous and contribute to over 80% of injury-related hospitalization especially amongst ...
3noIn this paper we describe a falls detection and classification algorithm for discriminating falls...
2noIn this paper we describe a falls detection and classification algorithm for discriminating falls...
A robust fall detection system is essential to support the independent living of elderlies. In this ...
Elder people are increasing all over the world as a result certain fall occur in their daily life. T...
Automatic fall detection will promote independent living and reduce the consequences of falls in the...
Falls are a serious public health problem and possibly life threatening for people in fall risk grou...
For a person when carrying out household chores or even when walking on the streets, there is a risk...
Activity and Fall detection have been a topic of keen interest in the field of ambient assisted livi...
Statistics show that, each year, falls affect tens of millions of elderly people throughout the worl...
The current machine learning algorithms in fall detection, especially those that use a sliding windo...
International audienceAccording to the world health organization, millions of elderly suffer from fa...
The application of machine learning techniques to detect and classify falls is a prominent area of r...
In the past few years, several works describing systems for the prompt detection of falls have been ...
Abstract Background Falls can cause trauma, disability and death among older people. Ambulatory acce...
Falls are dangerous and contribute to over 80% of injury-related hospitalization especially amongst ...
3noIn this paper we describe a falls detection and classification algorithm for discriminating falls...
2noIn this paper we describe a falls detection and classification algorithm for discriminating falls...
A robust fall detection system is essential to support the independent living of elderlies. In this ...
Elder people are increasing all over the world as a result certain fall occur in their daily life. T...
Automatic fall detection will promote independent living and reduce the consequences of falls in the...
Falls are a serious public health problem and possibly life threatening for people in fall risk grou...
For a person when carrying out household chores or even when walking on the streets, there is a risk...
Activity and Fall detection have been a topic of keen interest in the field of ambient assisted livi...
Statistics show that, each year, falls affect tens of millions of elderly people throughout the worl...
The current machine learning algorithms in fall detection, especially those that use a sliding windo...
International audienceAccording to the world health organization, millions of elderly suffer from fa...
The application of machine learning techniques to detect and classify falls is a prominent area of r...
In the past few years, several works describing systems for the prompt detection of falls have been ...
Abstract Background Falls can cause trauma, disability and death among older people. Ambulatory acce...
Falls are dangerous and contribute to over 80% of injury-related hospitalization especially amongst ...