| Literature DB >> 31908989 |
Samir Marwan Hammami1, Muhammad Alhammami2.
Abstract
We present in this paper a machine learning model for detecting violence against children. This model, which uses skeletal data acquired by depth sensors achieved a high accuracy violence detection rate of 99.03 %. In sum, this research method presents: •First ML-based method for detecting most common child abuses, which keeps the privacy of people by using only skeleton joints data.•The model has only two classes (violent action, non-violent action).•The model can be a base for other researches and implementations in schools by school psychologists and counselors.Entities:
Keywords: Classification; Depth sensor; Optimized ML-based System Model for Detecting Violence Against Children; Reduced skeletal features-based model; Technology in society; k-NN
Year: 2019 PMID: 31908989 PMCID: PMC6938897 DOI: 10.1016/j.mex.2019.11.017
Source DB: PubMed Journal: MethodsX ISSN: 2215-0161
Fig. 1Comparison of learning curves (1-NN, Random Forest) as functions of the percentage size of dataset set used as training vectors.
Fig. 3Confusion Matrix, True Positive Rate, and False Negative Rate.
The final selected 25 features with their gain ratios.
| Information Gain | Euclidean distances between joints |
|---|---|
| 0.185 | child’s shoulder center <–>adult’s shoulder center |
| 0.182 | child’s head <–>adult’s head |
| 0.178 | child’s shoulder left<–>adult’s shoulder left |
| 0.177 | child’s shoulder left<–>adult’s shoulder right |
| 0.176 | child’s head <–>adult’s shoulder center |
| 0.174 | child’s shoulder right<–>adult’s shoulder right |
| 0.170 | child’s shoulder center <–>adult’s shoulder right |
| 0.163 | adult’s head <–>adult’s foot left |
| 0.162 | child’s elbow right <–>adult’s elbow right |
| 0.161 | child’s elbow left <–>adult’s spine |
| 0.160 | child’s shoulder left<–>adult’s elbow right |
| 0.159 | child’s elbow left <–>adult’s elbow left |
| 0.159 | child’s shoulder right<–>adult’s shoulder center |
| 0.158 | child’s hip left <–>adult’s ankle right |
| 0.158 | child’s knee left <–>adult’s ankle right |
| 0.157 | adult’s head <–>adult’s ankle left |
| 0.156 | adult’s shoulder center <–>adult’s foot right |
| 0.154 | child’s knee right <–>adult’s ankle right |
| 0.154 | adult’s head <–>adult’s knee left |
| 0.154 | child’s knee left <–>adult’s foot right |
Fig. 2Comparison of learning curves as functions of the number of top-ranked features according to their information gain ratio for K-NN and Random Forest.
Fig. 4ROC curve using the 1-NN classifier.
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