SculptStat: Statistical Analysis of Digital Sculpting Workflows

01/28/2016
by   Christian Santoni, et al.
0

Targeted user studies are often employed to measure how well artists can perform specific tasks. But these studies cannot properly describe editing workflows as wholes, since they guide the artists both by choosing the tasks and by using simplified interfaces. In this paper, we investigate digital sculpting workflows used to produce detailed models. In our experiment design, artists can choose freely what and how to model. We recover whole-workflow trends with sophisticated statistical analyzes and validate these trends with goodness-of-fits measures. We record brush strokes and mesh snapshots by instrumenting a sculpting program and analyze the distribution of these properties and their spatial and temporal characteristics. We hired expert artists that can produce relatively sophisticated models in short time, since their workflows are representative of best practices. We analyze 13 meshes corresponding to roughly 25 thousand strokes in total. We found that artists work mainly with short strokes, with average stroke length dependent on model features rather than the artist itself. Temporally, artists do not work coarse-to-fine but rather in bursts. Spatially, artists focus on some selected regions by dedicating different amounts of edits and by applying different techniques. Spatio-temporally, artists return to work on the same area multiple times without any apparent periodicity. We release the entire dataset and all code used for the analyzes as reference for the community.

READ FULL TEXT

page 1

page 3

page 6

page 8

research
02/23/2021

Deep Deformation Detail Synthesis for Thin Shell Models

In physics-based cloth animation, rich folds and detailed wrinkles are a...
research
04/18/2018

Effect of Spatial and Temporal Traffic Statistics on the Performance of Wireless Networks

The traffic in wireless networks has become diverse and fluctuating both...
research
10/24/2018

Statistical modeling of rates and trends in Holocene relative sea level

Characterizing the spatio-temporal variability of relative sea level (RS...
research
08/29/2019

GeoStyle: Discovering Fashion Trends and Events

Understanding fashion styles and trends is of great potential interest t...
research
05/30/2020

Temporal Trends of Intraurban Commuting in Baton Rouge 1990-2010

Based on the 1990-2010 CTPP data in Baton Rouge, this research analyzes ...
research
12/12/2018

Spatial-Temporal Subset-based Digital Image Correlation: A General Framework

A comprehensive and systematic framework for easily extending and implem...
research
01/13/2018

Can you Trust the Trend: Discovering Simpson's Paradoxes in Social Data

We investigate how Simpson's paradox affects analysis of trends in socia...

Please sign up or login with your details

Forgot password? Click here to reset