Multi Visual Modality Fall Detection Dataset

06/25/2022
by   Stefan Denkovski, et al.
5

Falls are one of the leading cause of injury-related deaths among the elderly worldwide. Effective detection of falls can reduce the risk of complications and injuries. Fall detection can be performed using wearable devices or ambient sensors; these methods may struggle with user compliance issues or false alarms. Video cameras provide a passive alternative; however, regular RGB cameras are impacted by changing lighting conditions and privacy concerns. From a machine learning perspective, developing an effective fall detection system is challenging because of the rarity and variability of falls. Many existing fall detection datasets lack important real-world considerations, such as varied lighting, continuous activities of daily living (ADLs), and camera placement. The lack of these considerations makes it difficult to develop predictive models that can operate effectively in the real world. To address these limitations, we introduce a novel multi-modality dataset (MUVIM) that contains four visual modalities: infra-red, depth, RGB and thermal cameras. These modalities offer benefits such as obfuscated facial features and improved performance in low-light conditions. We formulated fall detection as an anomaly detection problem, in which a customized spatio-temporal convolutional autoencoder was trained only on ADLs so that a fall would increase the reconstruction error. Our results showed that infra-red cameras provided the highest level of performance (AUC ROC=0.94), followed by thermal (AUC ROC=0.87), depth (AUC ROC=0.86) and RGB (AUC ROC=0.83). This research provides a unique opportunity to analyze the utility of camera modalities in detecting falls in a home setting while balancing performance, passiveness, and privacy.

READ FULL TEXT

page 1

page 4

page 6

page 9

page 10

page 11

page 12

page 13

research
08/30/2018

DeepFall -- Non-invasive Fall Detection with Deep Spatio-Temporal Convolutional Autoencoders

Human falls rarely occur; however, detecting falls is very important fro...
research
04/17/2020

Motion and Region Aware Adversarial Learning for Fall Detection with Thermal Imaging

Automatic fall detection is a vital technology for ensuring health and s...
research
05/19/2019

Spatio-Temporal Adversarial Learning for Detecting Unseen Falls

Fall detection is an important problem from both the health and machine ...
research
11/09/2021

Does Thermal data make the detection systems more reliable?

Deep learning-based detection networks have made remarkable progress in ...
research
03/05/2020

mmFall: Fall Detection using 4D MmWave Radar and Variational Recurrent Autoencoder

Elderly fall prevention and detection is extremely crucial especially wi...
research
07/26/2019

Semantic Deep Intermodal Feature Transfer: Transferring Feature Descriptors Between Imaging Modalities

Under difficult environmental conditions, the view of RGB cameras may be...
research
08/23/2022

Fall Detection from Audios with Audio Transformers

Fall detection for the elderly is a well-researched problem with several...

Please sign up or login with your details

Forgot password? Click here to reset