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Samuel Chen
Bio [2005]
Samuel Chen is a physics student and an entrepreneur. He graduated
from Cornell with a master's in applied and engineering physics.
During his undergraduate years at UCLA, he double-majored in physics
and business economics. Samuel has experience as a CEO of a start-up
in Los Angeles, California, and an engineer in a semiconductor company in
Silicon Valley. His interests include social entrepreneurship,
physics, and most recently cellular automata and NKS. Away from his
computer, he enjoys snowboarding, skiing, sailing, tennis, and golf.
He is married and currently lives in Sunnyvale, California.
Project Title
Computer Vision with 2D Cellular Automata
Project

Humans can easily recognize and distinguish thousands of visual
categories. The best computer algorithms achieve only a fraction of human
performance in terms of both the number of classes recognized and the
accuracy in distinguishing between those classes. In this study, I have
utilized two-dimensional cellular automata (2DCA) as image sensors. I have
demonstrated that there exists a class of 2DCA that can filter horizontal,
vertical, and 45-degree lines, among other inputs. I have shown in this
study that instead of using traditional computer algorithms for tasks such
as computer vision, one can use simple programs for these concrete
applications.
Favorite Four-Color, Nearest-Neighbor, Totalistic Rule

Rule chosen: 109700
Rule number 109700 in four-color CA: When one runs this rule a few
steps, it gives a very repetitive behavior. When one runs this rule
for a larger number of steps, starting from a single black cell, it
gives a nested behavior. However, when one starts with random initial
conditions, this rule shows large grey areas interacting with white
areas, which can be taken as phase transition or avalanche. After
normally a few thousand steps, those large grey areas will end and the
output becomes nested again. To me, this kind of change in behavior
represents the essence of "emergence."
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