2007:Audio Music Mood Classification

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Audio Music Mood Classification

Introduction

In musicpsychology and music education, emotion component of music has been regonized as

the most strongly associated with music expressivity.(e.g. Juslin et al 2006[[#Related

Papers]]). Music information behavior studies (e.g.Cunningham, Jones and Jones 2004,

Cunningham, Vignoli 2004, Bainbridge and Falconer 2006 #Related Papers) have also

identified music mood/ emotion as an important criterion used by people in music seeking

and organiztion. Several experiments have been conducted in the MIR community to classify

music by mood (e.g. Lu, Liu and Zhang 2006, Pohle, Pampalk, and Widmer 2005, Mandel,

Poliner and Ellis 2006, Feng, Zhuang and Pan 2003#Related Papers). Please note: the

MIR community tends to use the word "mood" while musicpsychologists like to use "emotion".

We follow the MIR tradition to use "mood" thereafter.

However, evaluation of music mood classification is difficult as music mood is a very

subjective notion. Each aforementioned experiement used different mood categories and

different dataset, making comparison on previous work a virtually impossible mission. A

contest on music mood classification in MIREX will help build the first ever well

recognized mood taxomony, a scalable test set and precious ground truth.

This is the first time in MIREX to attempt a music mood classification evaluation. There

are many issues involved in this evaluation task, and let us start discuss them on wiki.

If needed, we will set up a mailing list devoting to the discussion.

Mood taxonomy

There are mainly two approaches to set up a music mood taxomony:

1. Starts from theories in music perception: (Lu, Liu and Zhang 2006) adopted Thayer's two dimensional energy-stress mood model which

divides music mood into four clusters:

  1. Contentment (low energy, low stress)
  2. Depression (low energy, high stress)
  3. Exuberance (high energy, low stress)
  4. Anxious/Frantic (high energy, high stress)

The authors argue "these four clusters almost cover the basic mood response to music and

they are usually in the most highly rated emotions as discovered in [music perception and

education]". Also, they pointed out there are alternative adjectives that are equivalent

to the above four, and those may be better in describing music mood, such as

Tenderness, Sadness, Happiness, and Fear/Anger.

(Feng, Zhuang and Pan 2003) seemed to follow this approach and used four categories,

happiness, sadness, anger and fear.

(Li and Ogihara 2003) followed another mood model called Farnsworth model, and gave binary label (existence versus non-existence) based on the ten adjective groups in Farnsworth. We

agree with the authors that this many labels made the task too difficult, thus the

performance was very low.

2. Derive from practice of music information service: Popular music websites and software (e.g. AllMusicGuild [[1]]],

MoodLogic [[2]]]) seek to exploit emotional aspects of music and

provide mood labels for albums or sound tracks. (Mandel, Poliner and Ellis 2006) used mood

labels on AMG that included 50 or more songs which results in 100 mood labels. An

advantage of this approach is the ground truth is already provided by those websites.

However, such a large number of categories seems overwhelming for the evaluation and post

-evaluation analysis. It would be ideal if we could come up a method to cluster those

labels into a smaller number of categories (perhaps under the direction of

musicpsychological theories). In this way, we can leverage the available labels and keep

the contest in a managable scale.


Ground Truth

Corresponding to how the mood taxonomy is going to be set up, there are two ways to obtain

ground truth for evaluation purpose.

1. human judgment: we can elicit subjective judgments by human evaluators by using an

online application comparable to IMIRSEL's Evalutron 6000. Details need to be further

discussed. To start, we propose human evaluators to choose one mood label from a set for

each music piece. Each piece may get at least 3 eyeballs and a label with at least 2 votes

will be assigned to this piece as ground truth. Of cause there will be disagreement and

depending on the number of available categories, votes to some pieces may be too scattered

and thus invalidate judgments on those pieces.

2. collect labels from popular music websites. A problem is AMG only provide labels for

albums. And even if labels for tracks are available, they might not be available for the

pieces that we own.

3. obtain datasets used in existing research. Those datasets have been labeled by

individual reseachers.

Data Collection

So far researchers have been using personal collections or those owned by their

institutions. It would be the best if we could reuse their collections because ground

truth is ready. Otherwise, the IMIRSEL lab has USPOP and USCRAP collections, but will need

to obtain ground truth labels.

Data format

Many existing work stereo music to a mono signal with a sampling frequency of 22050 Hz with 16 bits precision. We will keep this format in this contest.

Training set

It is unlikely that the contest would distribute any training dataset. Participants please

feel free to use any data other than the contest collection to tune algorithms. The

evaluation will use n-fold cross validation on the contest collection to eliminate any

bias on data splitting.

Evaluation

Like the genre classification task before, We will use accuracy and standard deviation of

results (in the event of uneven class sizes both this will be normalised according to

class size).

Test significance of differences in error rates of each system at each iteration using

McNemar's test, mean average and standard deviation of P-values.

Important Dates

TBD

File Format

TBD

Submission Format

TBD

Challenging Issues

  1. Mood changeable pieces: some pieces may start from one mood but end up with another one.

For each of those,we can either label it with the most salient mood or just let

inconsistent judgments rule it out.

  1. Multiple label classification: it is possible that one piece can have two or more

correct mood labels, but we strongly suggest to start with a less confusing contest and

leave the challenge to future MIREXs.

Opt-in survey of Audio music mood classification researchers

In this section we would like to take a brief 'opt-in' survey of researchers actively

working in this field. Please feel free to add yourself to the list (or email your details

to the moderators listed below).

Moderators

  • J. Stephen Downie (IMIRSEL, University of Illinois, USA) - [3]
  • Xiao Hu (IMIRSEL, University of Illinois, USA) -[4]