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Research Interests
DeLiang Wang's general area of interest is machine perception. More
specifically, he is interested in neural computation
for auditory and visual information processing. To achieve this, his
research program seeks to uncover computational principles for
auditory and visual analysis, including segmentation,
recognition and generation. This research is on the basis of
psychological/neurobiological data from human and animal perception and
computational considerations.
A fundamental aspect of perception is its ability to group elements
of a perceived scene or sensory field into coherent clusters (objects),
generally known as scene analysis and segmentation. The general
problem of scene analysis remains unsolved in computational audition
and vision. For a number of years, Wang's group focuses on
understanding the dynamics of large networks of
coupled neural oscillators and their applications to scene analysis
(see Wang, 2005, for a view/review on
this research effort). The results of this study have yielded
a neurobiologically plausible approach to address the problem of
scene analysis.
His recent work focuses on developing learning algorithms, in particular deep neural networks, for
auditory scene analysis. In order to achieve the ultimate goal of
constructing a computational system that possesses the human ability of
cocktail-party processing, one must
understand individual analyses, such as pitch, location, amplitude
and frequency modulation, onset/offset, rhythm, and so on. One must
also incorporate top-down mechanisms, such as recognition and attention.
His Perception and Neurodynamics Lab (PNL) investigates a variety of topics under
the general theme of computational audition where deep learning plays a major role.
See the PNL website for the current activity in the laboratory. |
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