Initial document commit. Added CV, Hud research proposal and QMUL statement to repo
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% Set your name here
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\def\name{Samuel Perry}
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pdfauthor = {\name},
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pdfkeywords = {DSP, Programmer},
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pdftitle = {\name: Curriculum Vitae},
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pdfsubject = {Curriculum Vitae},
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\setlist[enumerate]{itemsep=0.25em}
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\begin{document}
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% Place name at left
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{\huge \name}
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%\centerline{\huge \bf \name}
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\bigskip
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\begin{minipage}[t]{0.495\textwidth}
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20 Lower Luton Road\\
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Wheathampstead\\
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Hertfordshire\\
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AL4 8QZ\\
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\end{minipage}
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\begin{minipage}[t]{0.495\textwidth}
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Phone: (+44) 7766 521596\\
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Email: \href{mailto:samuel.perry89@gmail.com}{samuel.perry89@gmail.com} \\
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Linked-in: \\\href{https://uk.linkedin.com/in/sam-perry-04245438}{https://uk.linkedin.com/in/sam-perry-04245438}
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\end{minipage}
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\section*{Personal Profile}
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A highly motivated and ambitious graduate with a background in programming and
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digital signal processing in a musical context. Aiming to further knowledge and
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understanding of digital signal processing techniques, building on previous
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experience in this area. Capable of understanding and utilising signal
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processing techniques for the realization of signal processing applications for
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a variety of use cases, as proved through recent studies and employment.
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Through further studies in a technically oriented environment, the objective
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is to gain a deeper understanding in this field in order to facilitate future
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employment or research opportunities.
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\section*{Employment}
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\begin{itemize}
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\item Institut de Recherche et Coordination Acoustique/Musique (IRCAM)
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\end{itemize}
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\subsection*{IRCAM}
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Role: Student Research Assistant \\
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Team: Analysis \& Synthesis team \\
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Location: Paris, France \\
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Period: August 2014 - July 2015 \\
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\newline
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Description: \\
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Worked on a range of DSP related projects and tasks for the Analysis and
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Synthesis team. Modified and improved a number of programs, primarily in
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Python, with particular focus on vocal and musical processing. Major
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project involved using audio descriptor analyses to drive transformations
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on vocal corpus. Worked alongside a variety of researchers and
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professionals developing new and innovative signal processing techniques in
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fields of research such as such as vocal transformations and audio/musical
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content analysis. \\
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\newline
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Key areas explored:
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\begin{itemize}
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\item \textit{Audio content analysis}\\
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Utilised a number of audio descriptors to test for similarities in
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audio for a content matching algorithm
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\item \textit{Vocal segmentation/classification}\\
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Improved the efficiency of the content matching algorithm through
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addition of vocal segment classification and tree search algorithm.
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\item \textit{Distributed computing/Asynchronous processing}\\
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Debugged and improved a program that utilised distributed task
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scheduling for computation heavy analysis of audio
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\end{itemize}
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\newpage
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\section*{Education}
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\begin{itemize}
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\item Music Technology (BA), The University of Huddersfield, 2012.
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\begin{itemize}
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\item \emph{Final Research Project:} ``Audio Descriptor Driven
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Concatenative Synthesis of Corpus Databases'' \\
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- details of which can be found at:
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\href{http://pezz89.github.io/pysound/}{http://pezz89.github.io/pysound/}.
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\item \emph{Predicted Classification:} "Borderline 2:1/first" - refer to
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A.Harker written reference.
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\end{itemize}
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\item Music Technology BTEC Extended Diploma.
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\begin{itemize}
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\item \emph{Achievement:} Triple distinction awarded.
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\end{itemize}
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\end{itemize}
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\subsection*{Music Technology (BA)}
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Overview: \\
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Study involved developing a broad understanding of musical signal
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processing techniques through modules in topics such as DSP, Interactive
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Sound Design and a final research project based on a novel technique for
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audio synthesis \\
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A detailed understanding of signal processing methods such as signal filtering,
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spectral and temporal analysis, and granular synthesis were developed
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through the practical application of these techniques for creative
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purposes. Developer environments and languages such as Matlab, Python and
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C++ were used to apply these concepts in software. An understanding of
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application in hardware was also developed through the use of
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microcontrollers to develop implementations of digital filters.
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\section*{Key Skills}
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\textit{Competent in the following programming languages, packages and environments:}
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\begin{multicols}{3}
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\begin{itemize}
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\item Python
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\item Matlab
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\item C++
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\item \LaTeX
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\item Max/MSP
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\item Vim
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\item Bash script
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\item Mac OSX
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\item Git
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\item HDF5 File system
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\item Unix
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\end{itemize}
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\end{multicols}
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\section*{References}
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\begin{table}[h]
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\centering
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\label{my-label}
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\begin{tabular}{ll}
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\textit{Employer Reference} & \textit{Academic Reference} \\
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\begin{tabular}[c]{@{}l@{}}
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Axel Roebel \\
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Head of the Analysis/Synthesis Research Team \\
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IRCAM \\
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Research Institute, Paris \\
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Contact details available on request. \\
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\end{tabular} & \begin{tabular}[c]{@{}l@{}}
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Alex Harker \\
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Huddersfield University Lecturer \\
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The University of Huddersfield \\
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University Telephone: 01484 473043 \\
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E-mail: a.harker@hud.ac.uk \\
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\end{tabular}
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\end{tabular}
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\end{table}
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% Footer
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\bigskip
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{\small Last updated: \today}
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\end{document}
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\documentclass{scrartcl}
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\usepackage{enumitem}
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\usepackage[style=apa, backend=biber]{biblatex}
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\MakePerPage{footnote}
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\addbibresource{~/PerryPerrySource/LaTeX/Hud_masters.bib}
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\begin{document}
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\title{Huddersfield Research Masters}
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\subtitle{Combined F0 Estimation Algorithm Proposal}
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\author{Sam Perry}
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\date{}
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\maketitle
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\begin{abstract}
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The pitch of audio is a perceptually important characteristic as it
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forms the building block for musical characteristics such as key,
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melody, and harmony. Many methods have been developed for estimating
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the fundamental frequency of a signal, however very few have come close
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to generating estimations that resemble human perception of pitch with
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the same level of detail. Factors such as noise and the absence of a
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clear fundamental frequency cause erroneous results in algorithms and
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the concept of polyphony further complicates the problem as this
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requires the separation of different notes. The variety of estimation
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algorithms available has lead to a selection of methods that each
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perform to varying standards depending on conditions. For example,
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time-domain approaches, such as the autocorrelation approach, are able
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to detect the correct pitch of a signal more accurately than frequency
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domain approaches, such as the harmonic-product spectrum method, when
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the fundamental frequency is missing. However neither is able to detect
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multiple pitches in the way that the MUSIC algorithm can.
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\end{abstract}
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\section{Overview}
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This project would aim to explore the possibility of combining pre-existing
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algorithms based on audio descriptor analyses in order to adaptively select
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the algorithm with the best chance of an accurate estimate. The aim would
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be to create a robust tool for offline (and potentially realtime)
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estimation of F0 values.
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\section{Background/Existing Techniques}
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\subsection{F0 Estimation Techniques}
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The most popular F0 estimation algorithms can be categorized as one of
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two types:
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\begin{itemize}
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\item Spectral Techniques
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\item Temporal Techniques
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\end{itemize}
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\subsubsection{Spectral Techniques}
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Spectral techniques focus on analysing the spectral content of the signal
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by using output from an FFT to perform further processing to determine the
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F0 value. Types of technique that can be categorized in this way include:
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\begin{itemize}
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\item Harmonic Product Spectrum~\parencite[p.8]{smyth2015hps}
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\item Cepstral analysis
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\item Maximum likelihood
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\end{itemize}
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\subsubsection{Temporal Techniques}
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Temporal techniques attempt to calculate the periodicity of the signal.
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This can then be inverted to produce the frequency.
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Types of technique that can be categorized in this way include:
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\begin{itemize}
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\item Autocorrelation~\parencite[p.98]{lerch2012itaca}
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\item Zero-crossing~\parencite[p.98]{lerch2012itaca}
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\item NCCF (normalized cross correlation function)~\parencite{kasi2015yaapt}
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\end{itemize}
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\subsection{Current methods for technique combination}
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\label{sec:ComMeth}
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There is considerably less research into the combination of multiple
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algorithms for the improvement of results. Limited research has been
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carried out into the effects of training supervised learning algorithms to
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pick results based on circumstances.
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The ``Yet Another Algorithm for Pitch Tracking'' algorithm attempts to
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refine temporal analysis results through the analysis of spectral
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information.~\cite{kasi2015yaapt}
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Overall there remains a large scope for the type of research proposed.
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\section{Methodology}
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A detailed analysis of a variety of the most prominent F0 estimation
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techniques will be presented, to determine the quantity of methods
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needed and which methods will produce the best quality results. Methods
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for selecting an algorithm will also require significant further
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research. Potential techniques to be explored include:
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\begin{itemize}
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\item Applying machine learning algorithms in order to
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automatically determine the best algorithm as described in
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section \ref{sec:ComMeth}~\parencite{bogason2015ffesl}
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\item Leveraging information gained from prior feature extraction
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to determine aspects such as the signal's noisiness in order to
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select the algorithm best suited to this description.
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\item Dynamic algorithm parameter adoption to improve the likelihood
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of an accurate estimation based on descriptors. Adapting window
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size for example.~\parencite{liuni2012aasas}
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\end{itemize}
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Having determined the optimal set of estimation algorithms and
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selection techniques, these will be implemented in python, or
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potentially a faster compiled language such as C, to create a tool
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capable of creating robust F0 estimations for a range of varying audio
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files.
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\section{Significance of Research}
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This research aims to explore possible improvements to the overall
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robustness and general accuracy of pitch detection and thus has
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significance in fields such as music and speech analysis and
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transformations. By taking a higher level approach to the problem, it
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is hoped that the careful combination of algorithms will yield a
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superior overall outcome to that of the individual algorithms.
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\section{Timeline}
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\begin{table}[H]
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\centering
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\label{my-label}
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\begin{tabular}{ll}
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Month 1 - 3 & Initial research into methods and combination techniques \\
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& as well as the set up of initial framework for code if necessary. \\
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Month 3 - 6 & Implementation and testing of individual algorithms. \\
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Month 6 - 9 & Implementation of combination methods. \\
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Month 9 - 12 & Analysis of results and work on method improvements.
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\end{tabular}
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\end{table}
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\printbibliography
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\end{document}
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% Fonts
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\usepackage[urw-garamond]{mathdesign}
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% Set your name here
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\def\name{Samuel Perry}
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% The following metadata will show up in the PDF properties
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\hypersetup{
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colorlinks = true,
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urlcolor = black,
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pdfauthor = {\name},
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pdfkeywords = {DSP, Programmer},
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pdftitle = {\name: Curriculum Vitae},
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pdfsubject = {Curriculum Vitae},
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pdfpagemode = UseNone
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}
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\geometry{
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body={6.5in, 9.0in},
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left=1.0in,
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top=1.0in
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}
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% Customize page headers
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\pagestyle{myheadings}
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\markright{\name}
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\thispagestyle{empty}
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% Custom section fonts
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\subsectionfont{\rmfamily\mdseries\itshape\large}
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% \ttfamily for teletype,
|
||||||
|
% \sffamily for sans serif,
|
||||||
|
% \bfseries for bold,
|
||||||
|
% \scshape for small caps,
|
||||||
|
% \normalsize, \large, \Large, \LARGE sizes.
|
||||||
|
|
||||||
|
% Don't indent paragraphs.
|
||||||
|
\setlength\parindent{0em}
|
||||||
|
|
||||||
|
% Make lists without bullets and compact spacing
|
||||||
|
\renewenvironment{itemize}{
|
||||||
|
\begin{list}{}{
|
||||||
|
\setlength{\leftmargin}{1.5em}
|
||||||
|
\setlength{\itemsep}{0.25em}
|
||||||
|
\setlength{\parskip}{0pt}
|
||||||
|
\setlength{\parsep}{0.25em}
|
||||||
|
}
|
||||||
|
}{
|
||||||
|
\end{list}
|
||||||
|
}
|
||||||
|
\setlist[enumerate]{itemsep=0.25em}
|
||||||
|
|
||||||
|
\begin{document}
|
||||||
|
|
||||||
|
% Place name at left
|
||||||
|
{\huge\name}
|
||||||
|
|
||||||
|
% Alternatively, print name centered and bold:
|
||||||
|
%\centerline{\huge \bf \name}
|
||||||
|
|
||||||
|
\bigskip
|
||||||
|
|
||||||
|
\begin{minipage}[t]{0.495\textwidth}
|
||||||
|
20 Lower Luton Road\\
|
||||||
|
Wheathampstead\\
|
||||||
|
Hertfordshire\\
|
||||||
|
AL4 8QZ\\
|
||||||
|
|
||||||
|
\end{minipage}
|
||||||
|
\begin{minipage}[t]{0.495\textwidth}
|
||||||
|
Phone: (+44) 7766 521596\\
|
||||||
|
Email: \href{mailto:samuel.perry89@gmail.com}{samuel.perry89@gmail.com} \\
|
||||||
|
Linked-in: \\\href{https://uk.linkedin.com/in/sam-perry-04245438}{https://uk.linkedin.com/in/sam-perry-04245438}
|
||||||
|
\end{minipage}
|
||||||
|
|
||||||
|
\section*{\Large Sound and Music Computing MSc \\ \large Statement of Purpose}
|
||||||
|
The sound and music computing MSc offers a curriculum that is well suited to
|
||||||
|
continue my studies in the area of audio signal processing. I see the course as
|
||||||
|
an opportunity to broaden my knowledge of techniques for analysing and
|
||||||
|
synthesizing sounds digitally. This would build on my current understanding of
|
||||||
|
these techniques that has been developed over the past four years, during my
|
||||||
|
time studying at the University of Huddersfield and through working on the
|
||||||
|
Analysis and Synthesis team in the IRCAM research institute.\\
|
||||||
|
My time spent at the IRCAM research institute provided me with a valuable
|
||||||
|
insight into the ways that audio research is carried out and I understand that
|
||||||
|
the Centre for Digital Music carries out research of a similar nature. For
|
||||||
|
example I am already familiar with the Sonic Visualiser program which is not
|
||||||
|
dissimilar to the AudioSculpt software which was used extensively during my
|
||||||
|
internship at IRCAM. Due to the similarities between the two facilities, I
|
||||||
|
feel that the style of study on this course would be a logical step forward
|
||||||
|
from the type of work I encountered at IRCAM.\\
|
||||||
|
In addition to this I also have a reasonable understanding of audio descriptor
|
||||||
|
analysis techniques such as pitch and timbre analyses due to research carried
|
||||||
|
out on my final year project (see
|
||||||
|
\href{http://pezz89.github.io/pysound/index.html}{http://pezz89.github.io/pysound/index.html}
|
||||||
|
for details). This would most likely be useful prior knowledge for modules such
|
||||||
|
as the Music Analysis and Synthesis modules. \\
|
||||||
|
I would also be interested in other module available such as the machine
|
||||||
|
learning module, that would give me the opportunity to study a subject I have
|
||||||
|
basic knowledge of, but have not had the opportunity to explore in detail. I
|
||||||
|
believe this opportunity would be both interesting and useful for my future
|
||||||
|
endeavours. I am also keen to develop my programming ability and continue
|
||||||
|
developing my knowledge of languages such as Python, Matlab and C++. Given the
|
||||||
|
technical nature of the course, I imagine that my current knowledge of these
|
||||||
|
languages would be beneficial. \\
|
||||||
|
Studying on this course would also be an opportunity meet like minded
|
||||||
|
individuals and develop professional relationships in the industry I wish to
|
||||||
|
pursue a career in. My internship allowed me to network with a range of
|
||||||
|
researchers with a variety of specialist subjects and discuss thoughts and
|
||||||
|
ideas. I found this extremely beneficial to my understanding of this field of
|
||||||
|
research and would enjoy the oppertunity to network in a similar fashion.\\
|
||||||
|
I would expect that this course will provide the necessary skills to develop a
|
||||||
|
career in DSP engineering or provide a basis for further academic research in
|
||||||
|
these fields. On successful completion of this course I would look to either
|
||||||
|
further my studies as a PhD candidate or search for a job in commercial DSP or
|
||||||
|
general programming.\\
|
||||||
|
Overall I believe that I am a candidate that is well suited to the requirements
|
||||||
|
of this masters course. Given my previous studies and experience, I am
|
||||||
|
confident that I have the skill set and attitude required to complete a course
|
||||||
|
such as this.\\
|
||||||
|
\newline
|
||||||
|
Thank you for your consideration.
|
||||||
|
|
||||||
|
% Footer
|
||||||
|
\bigskip
|
||||||
|
{\small Last updated: \today}
|
||||||
|
|
||||||
|
\end{document}
|
||||||
Reference in New Issue
Block a user