All Projects → MuzafferAslan23 → Fall-Detection-Dataset

MuzafferAslan23 / Fall-Detection-Dataset

Licence: other
FUKinect-Fall dataset was created using Kinect V1. The dataset includes walking, bending, sitting, squatting, lying and falling actions performed by 21 subjects between 19-72 years of age.

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Fall-Detection-Dataset

FUKinect-Fall dataset was created using Kinect V1. The dataset includes walking, bending, sitting, squatting, lying and falling actions performed by 21 subjects between 19-72 years of age. A total of 1008 depth videos and 3D coordinates (x, y, z) of 20 joints were recorded in total (6 actions × 8 repeat × 21 subjects). Each video duration is recorded as approximately 4-5 seconds, 320 × 240 resolution and 30 frames per second depending on the action feature.

Dataset depth video size is about 7.5GB. Therefore, the dataset is not loaded. Dataset can be downloaded from the link below

Download link

https://www.dropbox.com/s/wl1o4x2xobj1s8w/FUKinect_Fall.rar?dl=0

Please Citeation

Aslan M., Akbulut Y., Sengor A., CevdetInce M. "Skeleton based efficient fall detection", J. Faculty Eng. Architecture Gazi Univ., 32 (4) (2017), pp. 1025-1034. (DOI: 10.17341/gazimmfd.369347),

https://dergipark.org.tr/download/article-file/388197.

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