"Representation Learning for Human and Robot Cognition"
I. Aim and Scope
Intelligent robots
are rapidly moving to the center of human environment; they collaborate
with human users in different applications that require high-level
cognitive functions so as to allow them to understand and learn from
human behavior within different Human-Robot Interaction (HRI) contexts.
To this end, a stubborn challenge that attracts much attention in
artificial intelligence is representation learning, which refers to
learning representations of data so as to efficiently extract relevant
features for probabilistic, nonprobabilistic, or connectionist
classifiers. This active area of research spans different fields and
applications including speech recognition, object recognition, emotion
recognition, natural language processing, language emergence and
development, in addition to mirroring different human cognitive
processes through appropriate computational modeling.
Learning
constitutes a basic operation in the human cognitive system and
developmental process, where perceptual information enhances the ability
of the sensory system to respond to external stimuli through
interaction with the environment. This learning process depends on the
optimality of features (representations of data), which allows humans to
make sense of everything they feel, hear, touch, and see in the
environment. Using intelligent robots could open the door to shed light
on the underlying mechanisms of representation learning and its
associated cognitive processes so as to take a closer step towards
making robots able to better collaborate with human users in space.
This
special issue aims to shed light on cutting edge lines of
interdisciplinary research in artificial intelligence, cognitive
science, neuroscience, cognitive robotics, and human-robot interaction,
focusing on representation learning with the objective of creating
natural and intelligent interaction between humans and robots. Recent
advances and future research lines in representation learning will be
discussed in detail in this journal special issue.
II. Potential Topics
III. Submission
ACM Transactions on Human-Robot Interaction is a
peer-reviewed, interdisciplinary, open-access journal using an online
submission and manuscript tracking system. To submit your paper, please:
- Go to https://mc.manuscriptcentral.com/thri and login or follow the "Create an account" link to register.
- After logging in, click the "Author" tab.
- Follow the instructions to "Start New Submission".
- Choose the submission category “SI: Representation Learning for Human and Robot Cognition”.