2,876 research outputs found
Pop Music Highlighter: Marking the Emotion Keypoints
The goal of music highlight extraction is to get a short consecutive segment
of a piece of music that provides an effective representation of the whole
piece. In a previous work, we introduced an attention-based convolutional
recurrent neural network that uses music emotion classification as a surrogate
task for music highlight extraction, for Pop songs. The rationale behind that
approach is that the highlight of a song is usually the most emotional part.
This paper extends our previous work in the following two aspects. First,
methodology-wise we experiment with a new architecture that does not need any
recurrent layers, making the training process faster. Moreover, we compare a
late-fusion variant and an early-fusion variant to study which one better
exploits the attention mechanism. Second, we conduct and report an extensive
set of experiments comparing the proposed attention-based methods against a
heuristic energy-based method, a structural repetition-based method, and a few
other simple feature-based methods for this task. Due to the lack of
public-domain labeled data for highlight extraction, following our previous
work we use the RWC POP 100-song data set to evaluate how the detected
highlights overlap with any chorus sections of the songs. The experiments
demonstrate the effectiveness of our methods over competing methods. For
reproducibility, we open source the code and pre-trained model at
https://github.com/remyhuang/pop-music-highlighter/.Comment: Transactions of the ISMIR vol. 1, no.
Extended pipeline for content-based feature engineering in music genre recognition
We present a feature engineering pipeline for the construction of musical
signal characteristics, to be used for the design of a supervised model for
musical genre identification. The key idea is to extend the traditional
two-step process of extraction and classification with additive stand-alone
phases which are no longer organized in a waterfall scheme. The whole system is
realized by traversing backtrack arrows and cycles between various stages. In
order to give a compact and effective representation of the features, the
standard early temporal integration is combined with other selection and
extraction phases: on the one hand, the selection of the most meaningful
characteristics based on information gain, and on the other hand, the inclusion
of the nonlinear correlation between this subset of features, determined by an
autoencoder. The results of the experiments conducted on GTZAN dataset reveal a
noticeable contribution of this methodology towards the model's performance in
classification task.Comment: ICASSP 201
Leadership capability of team leaders in construction industry
This research was conducted to identify the important leadership capabilities for
Malaysia construction industry team leaders. This research used exploratory sequential
mix-method research design which is qualitative followed by quantitative research
method. In the qualitative phase, semi-structured in-depth interview was selected
and purposive sampling was employed in selecting 15 research participants involving
team leaders and Human Resource Managers. Qualitative data was analysed using
content and thematic analyses. Quantitative data was collected using survey
questionnaire involving 171 randomly selected team leaders as respondents. The data
was analyzed using descriptive and inferential statistics consisting of t-test, One-way
Analysis of Variance (ANOVA), Pearson Correlation, Multiple Regression and
Structured Equation Modeling (SEM). This study found that personal integrity, working
within industry, customer focus and quality, communication and interpersonal skill,
developing and empowering people and working as a team were needed leadership
capabilities among construction industry team leaders. The research was also able to
prove that leadership skill is a key element to develop leadership capability. A
framework was developed based on the results of this study, which can be used as a
guide by employers and relevant agencies in enhancing leadership capability of
Malaysia construction industry team leade
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