In the recent years, several supervised and unsupervised approaches to fall detection have been presented in the literature. These are generally based on a corpus of examples of human falls that are, though, hard to collect. For this reason, fall detection algorithms should be designed to gather as much information as possible from the few available data related to the type of events to be detected. The one-shot learning paradigm for expert systems training seems to naturally match these constraints, and this inspired the novel Siamese Neural Network (SNN) architecture for human fall detection proposed in this contribution. Acoustic data are employed as input, and the twin convolutional autoencoders composing the SNN are trained to perform ...
Falls are dangerous for the elderly, often causing serious injuries especially when the fallen perso...
2noIn this paper we describe a falls detection and classification algorithm for discriminating falls...
In the recent years deep learning based approaches have dominated different types of classification ...
Nowadays, the detection of human fall is a problem recognized by the entire scientific community. Me...
In the past few years, several works describing systems for the prompt detection of falls have been ...
Supporting people in their homes is an important issue both for ethical and practical reasons. Indee...
The interest in assistive technologies for supporting people at home is constantly increasing, both ...
Abstract—More than a third of elderly fall each year in the United States. It has been shown that th...
The interest in assistive technologies for supporting people at home is constantly increasing, both ...
Elderly people and people with epilepsy may need assistance after falling, but may be unable to summ...
Statistics show that, each year, falls affect tens of millions of elderly people throughout the worl...
AbstractWe present a novel unsupervised fall detection system that employs the collected acoustic si...
It is very obvious that human fall due to unconsciousness is a very common health problem in every h...
The application of machine learning techniques to detect and classify falls is a prominent area of r...
In this study, we investigate the problem of detecting humans fall from video images. Many of the ex...
Falls are dangerous for the elderly, often causing serious injuries especially when the fallen perso...
2noIn this paper we describe a falls detection and classification algorithm for discriminating falls...
In the recent years deep learning based approaches have dominated different types of classification ...
Nowadays, the detection of human fall is a problem recognized by the entire scientific community. Me...
In the past few years, several works describing systems for the prompt detection of falls have been ...
Supporting people in their homes is an important issue both for ethical and practical reasons. Indee...
The interest in assistive technologies for supporting people at home is constantly increasing, both ...
Abstract—More than a third of elderly fall each year in the United States. It has been shown that th...
The interest in assistive technologies for supporting people at home is constantly increasing, both ...
Elderly people and people with epilepsy may need assistance after falling, but may be unable to summ...
Statistics show that, each year, falls affect tens of millions of elderly people throughout the worl...
AbstractWe present a novel unsupervised fall detection system that employs the collected acoustic si...
It is very obvious that human fall due to unconsciousness is a very common health problem in every h...
The application of machine learning techniques to detect and classify falls is a prominent area of r...
In this study, we investigate the problem of detecting humans fall from video images. Many of the ex...
Falls are dangerous for the elderly, often causing serious injuries especially when the fallen perso...
2noIn this paper we describe a falls detection and classification algorithm for discriminating falls...
In the recent years deep learning based approaches have dominated different types of classification ...