Automatic detection of auditory salience with optimized linear filters derived from human annotation

Pattern Recognition Letters(2014)

Cited 34|Views0
No score
Abstract
Auditory salience describes how much a particular auditory event attracts human attention. Previous attempts at automatic detection of salient audio events have been hampered by the challenge of defining ground truth. In this paper ground truth for auditory salience is built up from annotations by human subjects of a large corpus of meeting room recordings. Following statistical purification of the data, an optimal auditory salience filter with linear discrimination is derived from the purified data. An automatic auditory salience detector based on optimal filtering of the Bark-frequency loudness performs with 32% equal error rate. Expanding the feature vector to include other common feature sets does not improve performance. Consistent with intuition, the optimal filter looks like an onset detector in the time domain.
More
Translated text
Key words
optimized linear filter,automatic detection,human annotation,common feature set,auditory salience,automatic auditory salience detector,optimal filter,particular auditory event,defining ground truth,optimal auditory salience filter,human attention,feature vector,nonlinear programming
AI Read Science
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Chat Paper
Summary is being generated by the instructions you defined