Vision-based Human Fall Detection Systems using Deep Learning: A Review
- URL: http://arxiv.org/abs/2207.10952v1
- Date: Fri, 22 Jul 2022 09:02:02 GMT
- Title: Vision-based Human Fall Detection Systems using Deep Learning: A Review
- Authors: Ekram Alam, Abu Sufian, Paramartha Dutta, Marco Leo
- Abstract summary: Human fall is one of the very critical health issues, especially for elders and disabled people living alone.
In this review article, we discuss deep learning (DL)-based state-of-the-art non-intrusive (vision-based) fall detection techniques.
- Score: 5.809590924822318
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Human fall is one of the very critical health issues, especially for elders
and disabled people living alone. The number of elder populations is increasing
steadily worldwide. Therefore, human fall detection is becoming an effective
technique for assistive living for those people. For assistive living, deep
learning and computer vision have been used largely. In this review article, we
discuss deep learning (DL)-based state-of-the-art non-intrusive (vision-based)
fall detection techniques. We also present a survey on fall detection benchmark
datasets. For a clear understanding, we briefly discuss different metrics which
are used to evaluate the performance of the fall detection systems. This
article also gives a future direction on vision-based human fall detection
techniques.
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