Fall Detection With UWB Radars and CNN-LSTM Architecture

被引:69
作者
Maitre, Julien [1 ]
Bouchard, Kevin [1 ]
Gaboury, Sebastien [1 ]
机构
[1] Univ Chicoutimi, Lab Intelligence Ambiante Reconnaissance Activit, 555 Blvd, Chicoutimi, PQ G7H 2B1, Canada
关键词
Cameras; Ultra wideband radar; Feature extraction; Informatics; Three-dimensional displays; Injuries; Fall; Detection; Classification; Ultra-wideband radar; CNN-LSTM; Leave-one-subject-out; DETECTION SYSTEM;
D O I
10.1109/JBHI.2020.3027967
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Fall detection is a major challenge for researchers. Indeed, a fall can cause injuries such as femoral neck fracture, brain hemorrhage, or skin burns, leading to significant pain. However, in some cases, trauma caused by an undetected fall can get worse with the time and conducts to painful end of life or even death. One solution is to detect falls efficiently to alert somebody (e.g., nurses) as quickly as possible. To respond to this need, we propose to detect falls in a real apartment of 40 square meters by exploiting three ultra-wideband radars and a deep neural network model. The deep neural network is composed of a convolutional neural network stacked with a long-short term memory network and a fully connected neural network to identify falls. In other words, the problem addressed in this paper is a binary classification attempting to differentiate fall and non-fall events. As it can be noticed in real cases, the falls can have different forms. Hence, the data to train and test the classification model have been generated with falls (four types) simulated by 10 participants in three locations in the apartment. Finally, the train and test stages have been achieved according to three strategies, including the leave-one-subject-out method. This latter method allows for obtaining the performances of the proposed system in a generalization context. The results are very promising since we reach almost 90% of accuracy.
引用
收藏
页码:1273 / 1283
页数:11
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