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Competence Center Information Retrieval and Machine Learning

Detection of Violent Scenes using Affective Features

Esra Acar

4. October 2012

Detection of Violent Scenes using Affective Features

Outline

▶ Motivation▶ Background▶ The Method

Audio Features Visual Features

▶ Results & Discussion▶ Conclusions & Future Work

4. October 2012 2

Detection of Violent Scenes using Affective Features

Motivation

▶ The MediaEval 2012 Affect Task aims at detecting violent segments in movies.

▶ A recent work on horror scene recognition detects horror scenes by affect-related features.

▶ We investigate whether affect-related features provide good representation of

violence, and making abstractions from low-level features is better than

directly using low-level data.

4. October 2012 3

Detection of Violent Scenes using Affective Features

Background

▶ The affective content of a video corresponds to the intensity (i.e. arousal), and the type (i.e. valence) of emotion expected to arise in the user while watching that video.

▶ Recent research efforts propose methods to map low-level features to high-level emotions.

▶ Film-makers intend to elicit some particular emotions (i.e. expected emotions) in the audience.

▶ When we refer to violence as an expected emotion in videos, affect-related features are applicable for violence detection.

4. October 2012 4

Detection of Violent Scenes using Affective Features

The Method

▶ The method uses affect-related audio and visual features to represent violence.

▶ Low-level audio and visual features are extracted.▶ Mid-level audio features are generated based on the low-

level ones.

▶ The audio and visual features are then fused at the feature-level and a two-class SVM is trained.

4. October 2012 5

Detection of Violent Scenes using Affective Features

Audio Features - 1

▶ Affect-related audio features used in the work are: Audio energy

related to the arousal aspect. high/low energy corresponds to high/low emotion intensity. used for vocal emotion detection.

Mel-Frequency Cepstral Coefficients (MFCC) related to the arousal aspect. works well for the detection of excitement/non-excitement.

Pitch related to the valence aspect. significant for emotion detection in speech and music.

4. October 2012 6

Detection of Violent Scenes using Affective Features

Audio Features - 2

▶ Each video shot has different numbers of audio energy, pitch and MFCC feature vectors (due to varying shot durations).

▶ Audio representations are obtained by computing mean and standard deviation for these audio features.

▶ Abstraction for MFCC: MFCC-based Bag of Audio Words (BoAW) approach is chosen to

generate mid-level audio representations. Two different audio vocabularies are constructed: violence and

non-violence vocabularies (by k-means clustering). MFCC of violent/non-violent movie segments are used to

construct violence/non-violence words. Violence and non-violence word occurrences within a video

shot are represented by a BoAW histogram.

4. October 2012 7

Detection of Violent Scenes using Affective Features

Visual Features

▶ Average motion related to the arousal aspect. Motion vectors are computed using block-based motion

estimation. Average motion is found as the average magnitude of all

motion vectors.

▶ We compute average motion around the keyframe of video shots.

4. October 2012 8

Detection of Violent Scenes using Affective Features

Results & Discussion - 1

▶ The performance of our method was assessed on 3 Hollywood movies (evaluation criteria: MAP at 100).

▶ We submitted five runs: r1-low-level: low-level audio and visual features, Runs based on mid-level audio and low-level visual features

r2-mid-level-100k: 100k samples for dictionary construction, r3-mid-level-300k: 300k samples for dictionary construction, r4-mid-level-300k-default: 300k samples for dictionary

construction + SVM default parameters, and r5-mid-level-500k: 500k samples for dictionary construction.

4. October 2012 9

Detection of Violent Scenes using Affective Features

Results & Discussion - 2

▶ Slightly better performance is achieved with mid-level representations compared to the low-level one.

▶ Using affect-related features to describe violence needs some improvements (especially the visual part).

4. October 2012 10

Run AED-P AED-R AED-Fr1-low-level 0.141 0.597 0.2287

r2-mid-level-100k 0.140 0.629 0.2285

r3-mid-level-300k 0.144 0.625 0.2337

r4-mid-level-300k-default 0.190 0.627 0.2971

r5-mid-level-500k 0.154 0.603 0.2457

Table 1 – Precision, Recall and F-measure at shot level

Run MAP at 20 MAP at 100r1-low-level 0.2132 0.18502

r2-mid-level-100k 0.2037 0.14492

r3-mid-level-300k 0.3593 0.18538

r4-mid-level-300k-default 0.1547 0.15083

r5-mid-level-500k 0.15 0.11527

Table 2 – Mean Average Precision (MAP) values at 20 and 100

Detection of Violent Scenes using Affective Features

Conclusions & Future Work

▶ The aim of this work was to investigate whether affect-related features are well-suited to describe violence.

▶ Affect-related audio and visual features are merged in a supervised manner using SVM.

▶ Our main finding is that more sophisticated affect-related features are necessary to describe the content of videos (especially the visual part).

▶ Our next step in this work is to use mid-level features such as human facial features, and more sophisticated motion descriptors such as Lagrangian

measuresfor video content representation.

4. October 2012 11

Detection of Violent Scenes using Affective Features

Thank you!

Questions?

4. October 2012 12

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