/laboratory

Data analysis and processing

Primary LanguageJupyter NotebookMIT LicenseMIT

laboratory

Data analysis and processing

First approach

The first approach was to extract the images -> 01_image_extraction.ipynb

With these images in the CSV, we used 02_age_and_gender_v1.ipynb but the val_loss and val_accuracy were too low.

Second approach

Using:

  1. 03_age_v2.ipynb

  2. 04_gender_v2.ipynb

Metrics

You have to see what % is wrong in each age range. Do you make more mistakes with young or old people? with men or women?

References

resnet152 -> gender densenet201 -> edad