A Hair Drawing Evaluation Algorithm for Exactness Assessment Method in Portrait Drawing Learning Assistant System
A Hair Drawing Evaluation Algorithm for Exactness Assessment Method in Portrait Drawing Learning Assistant System
Blog Article
Nowadays, portrait drawing has become increasingly popular as a means of developing artistic skills and nurturing emotional expression.However, it is challenging for novices to start learning it, as they usually lack a solid grasp of proportions and structural foundations of the five senses.To address this problem, we COMMODES have studied Portrait Drawing Learning Assistant System (PDLAS) for guiding novices by providing auxiliary lines of facial features, generated by utilizing OpenPose and OpenCV libraries.For PDLAS, we have also presented the exactness assessment method to evaluate drawing accuracy using the Normalized Cross-Correlation (NCC) algorithm.
It calculates the similarity score between the drawing result and the initial portrait photo.Unfortunately, the current method does not assess the hair drawing, although it occupies a large part of a portrait and often determines its quality.In this paper, we present a hair drawing evaluation algorithm for the exactness assessment method to offer comprehensive feedback to users in PDLAS.To emphasize hair lines, this algorithm extracts the texture of the hair region by computing the eigenvalues and eigenvectors of the hair image.
For evaluations, we applied the proposal to drawing results KARAMBIT by seven students from Okayama University, Japan and confirmed the validity.In addition, we observed the NCC score improvement in PDLAS by modifying the face parts with low similarity scores from the exactness assessment method.