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DeLiang Wang

Researcher at Ohio State University

Publications -  475
Citations -  28623

DeLiang Wang is an academic researcher from Ohio State University. The author has contributed to research in topics: Speech processing & Speech enhancement. The author has an hindex of 82, co-authored 440 publications receiving 23687 citations. Previous affiliations of DeLiang Wang include Massachusetts Institute of Technology & Tsinghua University.

Papers
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On Connectedness: A Solution Based on Oscillatory Correlation

TL;DR: Oscillatory correlation emerges from LEGION, and it is shown that these oscillator networks exhibit sensitivity to topological structure, which may lay a neurocomputational foundation for explaining the psychophysical phenomenon of topological perception.
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Neural Spectrospatial Filtering

TL;DR: It is concluded that this neural spectrospatial filter provides a strong alternative to traditional and mask-based beamforming and achieves separation performance comparable to or better than beamforming for different array geometries and speech separation tasks and reduces to monaural complex spectral mapping in single-channel conditions.
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SLONN: a simulation language for modeling of neural networks

TL;DR: This paper presents a general purpose Simulation Language for modeling of Neural Networks (SLONN), based on a new neuron model, which can represent both spatial and temporal summation of a single neuron and synaptic plasticity.
Proceedings ArticleDOI

A computational auditory scene analysis system for robust speech recognition

TL;DR: A computational auditory scene analysis system for separating and recognizing target speech in the presence of competing speech or noise and estimates the ideal binary time-frequency (T-F) mask which retains the mixture in a local TF unit if and only if the target is stronger than the interference within the unit.
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Selecting salient objects in real scenes: An oscillatory correlation model

TL;DR: A neurocomputational model of object-based selection in the framework of oscillatory correlation is presented, which selects salient objects rather than salient locations by segmenting an input scene and integrating the segments with their conspicuity obtained from a saliency map.