This document presents a study on developing an enhanced skin colour classifier using an RGB ratio model. The study collected skin images from online sources to create training and testing datasets. It manually segmented the skin and non-skin pixels in the images to obtain ground truth data. It then transformed the pixel data from RGB colour space to a 2D matrix format. The RGB ratio model is proposed as a new explicitly defined skin region technique. The model is formulated by examining histograms and scatter plots of the training data as well as comparing to existing Kovac, Swift and Saleh skin detection models. The RGB ratio model and existing models are tested on benchmark datasets to evaluate their performance in classifying skin pixels.