
3D skeletons UP-Fall Dataset Different between Fall and Impact detection Overview This dataset aims to facilitate research in fall detection, particularly focusing on the precise detection of impact moments within fall events. The 3D skeletons data accuracy and comprehensiveness make it a valuable resource for developing and benchmarking fall detection algorithms. The dataset contains 3D skeletal data extracted from fall events and daily activities of 5 subjects performing fall scenarios Data Collection The skeletal data was extracted using a pose estimation algorithm, which processes images frames to determine the 3D coordinates of each joint. Sequences with less than 100 frames of extracted data were excluded to ensure the quality and reliability of the dataset. As a result, some subjects may have fewer CSV files. CSV Structure The data is organized by subjects, and each subject contains CSV files named according to the pattern C1S1A1T1, where: C: Camera (1 or 2) S: Subject (1 to 5) A: Activity (1 to N, representing different activities) T: Trial (1 to 3) subject1/`: Contains CSV files for Subject 1. C1S1A1T1.csv: Data from Camera 1, Activity 1, Trial 1 for Subject 1 C1S1A2T1.csv: Data from Camera 1, Activity 2, Trial 1 for Subject 1 C1S1A3T1.csv: Data from Camera 1, Activity 3, Trial 1 for Subject 1 C2S1A1T1.csv: Data from Camera 2, Activity 1, Trial 1 for Subject 1 C2S1A2T1.csv: Data from Camera 2, Activity 2, Trial 1 for Subject 1 C2S1A3T1.csv: Data from Camera 2, Activity 3, Trial 1 for Subject 1 subject2/`: Contains CSV files for Subject 2. C1S2A1T1.csv: Data from Camera 1, Activity 1, Trial 1 for Subject 2 C1S2A2T1.csv: Data from Camera 1, Activity 2, Trial 1 for Subject 2 C1S2A3T1.csv: Data from Camera 1, Activity 3, Trial 1 for Subject 2 C2S2A1T1.csv: Data from Camera 2, Activity 1, Trial 1 for Subject 2 C2S2A2T1.csv: Data from Camera 2, Activity 2, Trial 1 for Subject 2 C2S2A3T1.csv: Data from Camera 2, Activity 3, Trial 1 for Subject 2 subject3/, subject4/, subject5/: Similar structure as above, but may contain fewer CSV files due to the data extraction criteria mentioned above. Column Descriptions Each CSV file contains the following columns representing different skeletal joints and their respective coordinates in 3D space: Column Name Description joint_1_x X coordinate of joint 1 joint_1_y Y coordinate of joint 1 joint_1_z Z coordinate of joint 1 joint_2_x X coordinate of joint 2 joint_2_y Y coordinate of joint 2 joint_2_z Z coordinate of joint 2 ... ... joint_n_x X coordinate of joint n joint_n_y Y coordinate of joint n joint_n_z Z coordinate of joint n LABEL Label indicating impact (1) or non-impact (0) Example Here is an example of what a row in one of the CSV files might look like: joint_1_x joint_1_y joint_1_z joint_2_x joint_2_y joint_2_z ... joint_n_x joint_n_y joint_n_33 LABEL 0.123 0.456 0.789 0.234 0.567 0.890 ... 0.345 0.678 0.901 0 Usage This data can be used for developing and benchmarking impact fall detection algorithms. It provides detailed information on human posture and movement during falls, making it suitable for machine learning and deep learning applications in impact fall detection and prevention. Using github 1. Clone the repository: -bash git clone https://github.com/Tresor-Koffi/3D_skeletons-UP-Fall-Dataset 2. Navigate to the directory: -bash -cd 3D_skeletons-UP-Fall-Dataset Examples Here's a simple example of how to load and inspect a sample data file using Python:```pythonimport pandas as pd # Load a sample data file for Subject 1, Camera 1, Activity 1, Trial 1 data = pd.read_csv('subject1/C1S1A1T1.csv')print(data.head())
IMPACT DETECTION, FALL DETECTION
IMPACT DETECTION, FALL DETECTION
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