Back close

Eliminating Environmental Context for Fall Detection Based on Movement Traces

Publication Type : Conference Paper

Publisher : Springer

Source : Smart innovation, systems and technologies, pp. 343–357, Jan. 2023

Url : https://link.springer.com/chapter/10.1007/978-981-19-8669-7_31

Campus : Coimbatore

School : School of Computing

Year : 2023

Abstract : Falls are a prominent cause of mortality and severe injury among the elderly. It can be prevented by tracking them and providing prompt treatment. Current fall detection systems use data from sensors or cameras in various ways. False positives are common in sensor-based systems, and operating system constraints make privacy a major concern in vision-based systems. This paper proposes a technique for detecting falls from RGB images using a convolutional neural network (CNN) utilizing movement trace characteristics generated by a modified structural similarity index (SSIM) that can be integrated into resource-constrained devices for in-house monitoring. The proposed approach uses a camera system and is tested against the UR Fall detection (URFD) dataset, outperforming previous fall detection systems. Our method achieves 99% accuracy. The model's dependence on readily available sensors and superior performance on the URFD dataset makes it a viable option for reliable fall detection in the real world.

Cite this Research Publication : J. Balamanikandan, Senthil Kumar Thangavel, and M. Chang, “Eliminating Environmental Context for Fall Detection Based on Movement Traces,” Smart innovation, systems and technologies, pp. 343–357, Jan. 2023

Admissions Apply Now