Articles
Vol. 8 No. 4 (2021)
Research on Fall Detection Based on Improved Human Posture Estimation Algorithm
- Yangjiaozi ZHENG
- Shang ZHANG
-
Submitted
-
February 17, 2024
-
Published
-
2024-02-17
Abstract
According to recent research statistics, approximately 30% of people who experienced falls are over the age of 65. Therefore, it is meaningful research to detect it in time and take appropriate measures when falling behavior occurs. In this paper, a fall detection model based on improved human posture estimation algorithm is proposed. The improved human posture estimation algorithm is implemented on the basis of Openpose. An improved strategy based on depthwise separable convolution combined with HDC structure is proposed. The depthwise separable convolution is used to replace the convolution neural network structure, which makes the network lightweight and reduces the re-dundant layer in the network. At the same time, in order to ensure that the image features are not lost and ensure the accuracy of detecting human joint points, HDC structure is introduced. Experiments show that the improved algorithm with HDC structure has higher accuracy in joint point detection. Then, human posture estimation is applied to fall detection research, and fall event modeling is carried out through fall feature extraction. The designed convolution neural network model is used to classify and distinguish falls. The experimental results show that our method achieves 98.53%, 97.71% and 97.20% accuracy on three public fall detection data sets. Compared with the experimental results of other methods on the same data set, the model designed in this paper has a certain improvement in system accuracy. The sensitivity is also improved, which will reduce the error detection probability of the system. In addition, this paper also verifies the real-time performance of the model. Even if researchers are experimenting with low-level hardware, it can ensure a certain detection speed without too much delay.
Downloads
Download data is not yet available.
-
ABID Anam ,
HAQ Zia Ul ,
KHAN Muhammad Tahir,
Fault Detection using Negative Selection and Genetic Algorithms
,
Instrumentation: Vol. 6 No. 3 (2019)
-
ABID Anam ,
HAQ Zia Ul ,
KHAN Muhammad Tahir,
Fault Detection using Negative Selection and Genetic Algorithms
,
Instrumentation: Vol. 6 No. 3 (2019)
-
Ruixuan Liu,
L. GAVRILOVA Marina,
Evaluating the Effect of Various Walking Conditions on KINECT-based Gait Recognition
,
Instrumentation: Vol. 9 No. 2 (2022)
-
PREMASIRI Swapna,
GAMAGE Lalith B.,
DE SILVA Clarence W. ,
RANAWEERA Jayasanka,
An improved Machine Learning Approach to Classify Sleep Stages and Apnea Events
,
Instrumentation: Vol. 6 No. 2 (2019)
-
Rong WANG ,
Tianhu WANG ,
Design of Intelligent Pension Online Monitoring Sys-tem Under the Environment of Internet of Things
,
Instrumentation: Vol. 10 No. 3 (2023)
-
Aijun Yan,
Jiale Li,
Jian Tang,
Double Pruning Structure Design for Deep Stochastic Configuration Networks Based on Mutual Information and Relevance
,
Instrumentation: Vol. 9 No. 4 (2022)
-
Changfu LIU,
Wenxiang ZHANG,
On-line Chatter Detection Using an Improved Support Vector Machine
,
Instrumentation: Vol. 6 No. 2 (2019)
-
Miaoyu Zhao,
Fang Yan,
Wenwen Li,
Yangshuo Liu,
Research on Detection of Food additives Based on Terahertz Spectroscopy and Analytic Hierarchy Process
,
Instrumentation: Vol. 11 No. 1 (2024)
-
Xuefen ZHU ,
Mengying LIN ,
Zhengpeng LU ,
Xiyuan CHEN ,
Detection and Analysis of Strong Ionospheric Scintillation in Equatorial Region
,
Instrumentation: Vol. 8 No. 4 (2021)
-
HTET Kyaw Ko Ko ,
Kok Kiong TAN,
Lane Keeping Algorithm for Off-The-Shelf Wide-Angle Camera
,
Instrumentation: Vol. 6 No. 2 (2019)
<< < 1 2 3 4 5 6 7 8 9 > >>
You may also start an advanced similarity search for this article.