Can sensitivity analysis be adapted to identify the sensitive parameters of a digital asset using spatiotemporal selections?
research question 2
Can the resulting sensitivity measures influence the evolutionary algorithm so that region-of-interest selections lead to greater numbers of offspring that have the selected traits than with traditional wholesale selection?
research question 3
Can a visualization interface be developed:
for viewing and making decisions about populations of spatiotemporal digital assets?
that accommodates human limits on:
short-term memory?
visual perception?
research question 4
Can an interactive evolutionary selection interface allow users to select regions-of-interest:
in both space and time simultaneously?
in a way that is both fast and tolerant of imprecise gestures?
baseline pipeline
new pipeline
research question 1
Can sensitivity analysis be adapted to identify the sensitive parameters of a digital asset using spatiotemporal selections?
sensitivity analysis
sample the g-dimensional input space
evaluate the model at each sampled point
measure the sensitivity of each parameter
Morris method
Morris Method
Morris Method
Sobol method
practical considerations
Morris requires (300x) fewer model evaluations
Sobol can measure quantitative sensitivities more accurately
Important variables
model evaluation time
number of region-of-interest selections
number of model evaluations
number of parameters
vase parametric model
baseline crossover
baseline mutation
sampling modifications
measuring similarity
multiple trajectories
relative to root trajectory
shape metric
translation, rotation, scale invariant
temporal matching provided by DTW
modifications to suit digital animation
"A new descriptor for multiple 3D motion trajectories recognition" by Shao and Li
sum of sincs test model
mutation sensitivity analysis
crossover sensitivity analysis
research question 2
Can the resulting sensitivity measures influence the evolutionary algorithm so that region-of-interest selections lead to greater numbers of offspring that have the selected traits than with traditional wholesale selection?
sensitive crossover
sensitive crossover demo
sensitive mutation
sensitive mutation demo
sensitive reproduction demo
sensitive reproduction results
Population Visualization Challenges
visual clutter
making comparisons is difficult
artificially inflated diversity
distracting peripheral motions
research question 3
Can a visualization interface be developed:
for viewing and making decisions about populations of spatiotemporal digital assets?
that accommodates human limits on:
short-term memory?
visual perception?
population visualization task description
acquire a general sense of the current population
the ranges of visible traits
the basic categories of designs
observe individual designs in detail
compare similar designs
choose the more interesting designs or characteristics
(understand impact of decisions over time)
visual summarization demo
baseline system
IDEAS system
ghost display
streamline display
population layout demo
baseline system
IDEAS system
small multiples layout
RMDS sorted layout
isolation mode demo
baseline system
IDEAS system
playback all
playback selected
memory assistance
region-of-interest selection types
whole
only
especially
all but
research question 4
Can an interactive evolutionary selection interface allow users to select regions-of-interest:
in both space and time simultaneously?
in a way that is both fast and tolerant of imprecise gestures?
selecting animated
regions-of-interest
not just spatial regions
but also time spans
typically, this requires context switching
trace selection task description
selection interaction should be fast
gesture recognition should be tolerant of error
real-time feedback on selection
minimize context switching
subsequence DTW
trace selection demo
trace selection demo
trace selection user study
case studies
holistic, anecdotal evaluation
human-in-the-loop
designer satisfaction
experience notes
real world design contexts
case study procedure
designers provided the original motion clip
a parametric model created with designer input
training session
design session
survey
case study 1
digital tailor and simulation artist (Pixar)
design praxis: rough to fine
streamlines helped her visualize "character" of the animation
export and restart strategy
surprised by a mutation
noticed that outliers are on the edges of the population
case study 2
birth sequence for rock giant character in his thesis
specific design context
two design sessions
1: low diversity space
2: expanded design space
surprised by novel animation ideas
trace selection interface suggestion
case study 3
motion clips for 2 fairy characters in a side scroller game
selected 2 foot motions and wanted to see the average
grouping in the population layout helped with developing two different motion ideas simultaneously
also used the export and restart strategy
suggested viewing angle presets
case study summary
design session times: 30 minutes to an hour
number of generations: 5 to 11
all participants
enjoyed the experience of navigating the design space and felt that they could navigate towards interesting designs
were satisfied with the results of their process
felt that they had arrived at a place in the design process where tweaking could begin
changed their minds about their interests mid-design session
found at least one unexpected, interesting idea
case study analysis
all participants
reported that it was easy to notice patterns and prevailing tendencies within the population
said making comparisons between similar individuals was easy
used the parents display and the selection history at least once
animation focus aid answers varied widely
trace selection feedback also varied, and differed from user study results (different test bed)
case study analysis (continued)
all perceived the region-of-interest selection methods to be either as useful or slightly less useful than whole-candidate selection ("all but" was the least popular)
export and restart strategy was common
parametric granularity
wide variety of application ideas
research questions
Can sensitivity analysis be adapted to identify the sensitive parameters of a digital asset using spatiotemporal selections?
Can the resulting sensitivity measures influence the evolutionary algorithm so that region-of-interest selections lead to greater numbers of offspring that have the selected traits than with traditional wholesale selection?
major contributions
Sensitivity analysis has been successfully adapted to identify the sensitive parameters that correspond to spatiotemporal aspects of digital assets. (RQ1)
The sensitivity measures have been shown, in side-by-side comparison with the pre-existing system, to influence the evolutionary algorithm so that region-of-interest selections lead to greater numbers of offspring that have the selected traits than with traditional wholesale selection. (RQ2)
research questions (continued)
Can a visualization interface be developed for viewing and making decisions about populations of spatiotemporal digital assets that accommodates human limits on short-term memory and visual perception?
Can an interactive evolutionary selection interface allow users to select regions-of-interest in both space and time simultaneously in a way that is both fast and tolerant of imprecise gestures?
supporting contributions
The selection interface user study has shown that trace selection allows users to select regions-of-interest in both space and time simultaneously, and is both fast and enjoyable to use. (RQ4)
The population visualization interface for spatiotemporal designs enabled case study participants to view and make decisions about the designs without succumbing to the human limitations of short-term memory and perception bandwidth. (RQ3)