ESTIMATED WEIGHT AND HEIGHT OF BODY HUMANS BASED ON FACE IMAGE
Measurement of body weight and height is generally carried out conventionally, which is usually by direct measurement using either a scale or a stature meter. However, in a digital way, we offer a digital approach to measuring weight and height by means of an estimate based on facial images under...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/54150 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Measurement of body weight and height is generally carried out conventionally,
which is usually by direct measurement using either a scale or a stature meter.
However, in a digital way, we offer a digital approach to measuring weight and
height by means of an estimate based on facial images under normal conditions
using machine learning techniques.
In this study, an experiment was conducted to explore the best approaches and
techniques needed in the process of estimating the value of body weight, height
and Body Mass Index. The experiment was carried out with two kinds of
approaches, namely Embeddings and Landmarks and four types of regression
techniques, namely linear, ridge, lasso, and polynomial. Furthermore, the
assessment of each technique and approach is carried out using a comparison of
the error value between the ground truth and the estimated value. Based on the
experimental results, a real-time application will be implemented to facilitate the
process of estimating the value of weight, height and Body Mass Index.
Based on the research conducted, it was found that a model with input in the form
of the 5 most important features from landmark distances with polynomial
regression techniques, produces the best performance with an average value of
RMSE of around 0.41 and an average value of MAE of about 0.29 which is
obtained around 960 experimental data for each value of weight, height and Body
Mass Index in normal conditions. Based on the error evaluation value, the
application built with the landmark model is successful in estimating the weight,
height and BMI of humans in normal conditions close to the true value.
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