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Neural Speech Decoding During Audition, Imagination and Production
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In: IEEE (2021)
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A multispeaker dataset of raw and reconstructed speech production real-time MRI video and 3D volumetric images ...
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Deblurring for Spiral Real-Time MRI Using Convolutional Neural Networks ...
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Vocal tract shaping of emotional speech
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In: Comput Speech Lang (2020)
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Data from: Speed-accuracy tradeoffs in human speech production ...
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Dynamic Off-resonance Correction for Spiral Real-Time MRI of Speech
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A technology prototype system for rating therapist empathy from audio recordings in addiction counseling
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Advances in real-time magnetic resonance imaging of the vocal tract for speech science and technology research
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"Rate My Therapist": Automated Detection of Empathy in Drug and Alcohol Counseling via Speech and Language Processing
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On Quantifying Facial Expression-Related Atypicality of Children with Autism Spectrum Disorder
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Directly data-derived articulatory gesture-like representations retain discriminatory information about phone categories
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Dynamic 3-D visualization of vocal tract shaping during speech
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Analyzing the Language of Therapist Empathy in Motivational Interview based Psychotherapy
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Abstract:
Empathy is an important aspect of social communication, especially in medical and psychotherapy applications. Measures of empathy can offer insights into the quality of therapy. We use an N-gram language model based maximum likelihood strategy to classify empathic versus non-empathic utterances and report the precision and recall of classification for various parameters. High recall is obtained with unigram while bigram features achieved the highest F1-score. Based on the utterance level models, a group of lexical features are extracted at the therapy session level. The effectiveness of these features in modeling session level annotator perceptions of empathy is evaluated through correlation with expert-coded session level empathy scores. Our combined feature set achieved a correlation of 0.558 between predicted and expert-coded empathy scores. Results also suggest that the longer term empathy perception process may be more related to isolated empathic salient events.
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Keyword:
Article
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URL: http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5010859/
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