|
|
Showing 1 - 3 of
3 matches in All Departments
This book presents the latest findings in the field of
brain-inspired intelligence and visual perception (BIVP), and
discusses novel research assumptions, including an introduction to
brain science and the brain vision hypotheses. Moreover, it
introduces readers to the theory and algorithms of BIVP - such as
pheromone accumulation and iteration, neural cognitive computing
mechanisms, the integration and scheduling of core modules, and
brain-inspired perception, motion and control - in a step-by-step
manner. Accordingly, it will appeal to university researchers,
R&D engineers, undergraduate and graduate students; to anyone
interested in robots, brain cognition or computer vision; and to
all those wishing to learn about the core theory, principles,
methods, algorithms, and applications of BIVP.
This book seeks to interpret connections between the machine brain,
mind and vision in an alternative way and promote future research
into the Interdisciplinary Evolution of Machine Brain (IEMB). It
gathers novel research on IEMB, and offers readers a step-by-step
introduction to the theory and algorithms involved, including
data-driven approaches in machine learning, monitoring and
understanding visual environments, using process-based perception
to expand insights, mechanical manufacturing for remote sensing,
reconciled connections between the machine brain, mind and vision,
and the interdisciplinary evolution of machine intelligence. This
book is intended for researchers, graduate students and engineers
in the fields of robotics, Artificial Intelligence and brain
science, as well as anyone who wishes to learn the core theory,
principles, methods, algorithms, and applications of IEMB.
This book seeks to interpret connections between the machine brain,
mind and vision in an alternative way and promote future research
into the Interdisciplinary Evolution of Machine Brain (IEMB). It
gathers novel research on IEMB, and offers readers a step-by-step
introduction to the theory and algorithms involved, including
data-driven approaches in machine learning, monitoring and
understanding visual environments, using process-based perception
to expand insights, mechanical manufacturing for remote sensing,
reconciled connections between the machine brain, mind and vision,
and the interdisciplinary evolution of machine intelligence. This
book is intended for researchers, graduate students and engineers
in the fields of robotics, Artificial Intelligence and brain
science, as well as anyone who wishes to learn the core theory,
principles, methods, algorithms, and applications of IEMB.
|
You may like...
Glass Tower
Sarah Isaacs
Paperback
R280
R259
Discovery Miles 2 590
Bad Luck Penny
Amy Heydenrych
Paperback
(1)
R350
R323
Discovery Miles 3 230
|